2019-03-10 19:34:56 +03:00
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# Traffic Simulation from scratch
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2019-03-13 02:31:54 +03:00
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The goal of this article is to explain the traffic simulation model that A/B
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Street uses. There's a large amount of traffic simulation research in academia,
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but the papers are often paywalled or require background knowledge. This article
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is meant to be accessible to anybody with a basic background in software
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engineering and high-school kinematics.
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2019-03-10 19:34:56 +03:00
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2019-03-13 02:31:54 +03:00
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Disclaimers... my background is in software engineering, not civil engineering.
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The design space that A/B Street explores is absolutely massive; there are so
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many alternate ways of doing everything from modeling the map, to representing
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agents and their movement and conflict... Please send any critique/feedback/etc
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2019-03-12 21:44:15 +03:00
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2019-03-10 19:34:56 +03:00
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## Introduction
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2019-03-13 02:31:54 +03:00
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My other goal with this article is to explain what I work on to my friends and
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family. It's very easy to say "I'm not a computer programmer or a math expert,
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there's no way I could understand this," and despite how frustrating this is,
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I've previously accepted this. But today I want more. Driving, moving around a
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city, and getting stuck in traffic are common experiences, and I think they can
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help...
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Imagine there's an incredibly rainy afternoon and we've got lots of paper. I
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draw a to-scale map of your hometown, showing detail like how many lanes are on
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every road, noting the speed limits, and marking all the stop signs and traffic
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lights. Then I place a bunch of color-coded Hot Wheels and, I don't know, bits
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of paper around the map. Each of the cars will start somewhere and wants to go
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to their colored square. To make it easy, let's pretend they all start driving
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at the same time. My challenge for you is to show me exactly where the cars are
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30 seconds after starting to drive, then 5 minutes in, and then an hour later.
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Maybe I'm interested in figuring out where the traffic jams happen. Or maybe we
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throw in some buses and little toy soldiers, and I want to know how long people
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after waiting for their bus because it's delayed in traffic. Or maybe I'm just
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sadistic and want to watch you squirm.
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How would you figure out what happens to all of the cars after some amount of
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time? You'll probably start by figuring out the route each of them will take to
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their destination -- probably some approximation of the shortest path (by pure
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distance) or fastest (a longer route on a highway might be faster than a short
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one through residential roads). You'll inch the cars forward on their lane, not
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moving them (too much) faster than the speed limit. When two cars are near each
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other, you'll make one follow the other at a reasonable distance, or maybe
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change lanes and try to overtake them if there's room. You'll make the cars stop
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at stop signs and for red lights. When you accidentally push too many cars
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through a green light turned feisty yellow then somber red, you'll make the
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opposing lane's cars angrily honk at the jerk blocking the box by making odd
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little squeaks out of the corner of your mouth. (And I will laugh at you, of
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course.)
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Of course, you won't be able to tell me with perfect accuracy where all the cars
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are 45.2 seconds into our little game. There are potholes that'll slow some
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drivers down a bit that aren't marked on the map, and some cars that take a
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little longer to accelerate or notice the light's green. That's fine -- complete
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realism isn't so important, as long as things look reasonable.
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For this to be interesting for me to watch, there have to be a realistic number
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of cars -- 10 little Hot Wheels squeaking around all of Seattle won't tell me
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anything interesting about how the city flows. By now, you might be thinking
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this is going to be slightly tedious. Your fingers are going to get a bit
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cramped from budging 500,000 cars around a bit at a time. So I'll cut you a deal
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-- if you'll describe rules for how to move each of the cars forward a bit in
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sufficient detail, then I'll make a computer do all of the tedious bits.
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And that's all programming a traffic simulator is. You don't need to know what
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arrays and entity-component systems and trans-finite agent-based cellular RAM
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drives are (I made up that last one maybe). Let's get started!
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2019-03-12 21:44:15 +03:00
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## The map
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2019-03-13 02:31:54 +03:00
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Let's start with deciding exactly what our map of Seattle looks like. One of the
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trickiest and most satisfying parts about computer programming is figuring out
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what parts of the world to represent. Too much irrelevant detail makes it harder
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to... Yes, a tree partly blocking a tight corner might make people slow down,
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but it's probably a bit too much detail to worry about. Your choice of
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abstraction should, it turns out, depend on what you're actually trying to do.
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In this case, I'll cheat momentarily and describe how we should model the map.
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Later, I'll explain what I want A/B Street to be and how that led to including
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some things while omitting others.
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2019-03-12 21:44:15 +03:00
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Let's also clear up terminology. Diagram goes here...
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2019-03-10 19:34:56 +03:00
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2019-03-13 02:31:54 +03:00
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Let's start with **roads**. A road goes between exactly two **intersections**.
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You might think of 2nd Ave as a long road through all of downtown, but we'll
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chop it up as 2nd Ave between Bell St and Lenora, 2nd Ave from Lenora to Seneca,
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etc. Most intersections have two or more roads connected to them, but of course,
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we might also have dead-ends and cul-de-sacs. Each road has individual **lanes**
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going in some direction. Most roads have lanes going both directions, but a few
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one-ways only have lanes going in one direction. Cars will travel along a lane
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in single file and, to keep things simple, never change lanes in the middle of a
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road. When the car reaches the end of a lane, it can perform one of several
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**turns** through the intersection. After finishing the turn, the car will be at
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the beginning of a lane in another road. Some turns conflict, meaning it's not
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safe for two cars to do them simultaneously, while others don't conflict.
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If cars can't ever change lanes, couldn't they get stuck? Maybe a car starts on
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the rightmost lane and is only allowed to turn right, but actually needs to be
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in a middle lane to go straight through the intersection. Don't worry -- you can
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assume that there's a path between any two lanes. Instead of changing lanes in
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the middle of a road, cars in our game will change lanes when they turn. EXAMPLE
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PIC. I'll describe later why this is a good idea.
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For now, let's assume cars start on some lane. When their front bumper hits
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their colored square on their destination, they just immediately vanish. The
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colored square could be at the end of their destination lane, or somewhere in
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the middle.
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2019-03-10 19:34:56 +03:00
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2019-03-12 21:44:15 +03:00
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(could mention borders or not, maybe footnote)
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2019-03-13 02:31:54 +03:00
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Don't worry about parking, pedestrians, bicycles, or buses. These things are all
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important to A/B Street, but we'll ad them in later.
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2019-03-10 19:34:56 +03:00
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## Disrete-time model
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2019-03-12 21:44:15 +03:00
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Whoa, fancy name! Ignore it for a moment.
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2019-03-13 02:31:54 +03:00
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How do people drive? Very roughly, they look at things around them, take an
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action (press the gas some amount, press the brake some amount, turn the wheel a
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bit), and then do the same thing a half-second (or so) later. That's the essence
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of agent-based modeling -- sense the environment, plan what to do next, do it,
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then repeat some time later. We'll call the amount of time between each choice
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the **timestep** and say it's about 0.1 seconds. Let's try simulating traffic
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roughly this way -- every single car will take an action every 0.1 seconds that
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advances them through the world. Breaking up time in these regular 0.1s
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intervals is how we get the term "discrete-time model."
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What kind of controls do we want to give each driver? If we let them turn the
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steering wheel a few degrees left or right and apply some pressure to the gas
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pedal, then we have to figure out how this affects the position of the car and
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worry about how to make sure cars stay in their lane. That's way too
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complicated, and not interesting for our purposes. So let's say that for every
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car, we keep track of a few details:
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2019-03-12 21:44:15 +03:00
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- current lane or turn
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2019-03-13 02:31:54 +03:00
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- **dist_along**: distance of the front bumper along that lane or turn (starting
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at 0 for the beginning of the lane)
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2019-03-12 21:44:15 +03:00
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- current speed
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- the remaining path to the goal (lane1, turn2, lane3, turn5, ..., lane10)
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- vehicle length
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- maximum acceleration (some cars can start more quickly)
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- maximum deceleration (some cars can slam on their brakes and stop faster)
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The first four will change every 0.1s, while the last three don't ever change.
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2019-03-13 02:31:54 +03:00
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So what controls can a driver do? Accelerate (or decelerate) some amount. That's
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all. When the dist_along is bigger than the current lane/turn's length, we make
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the new current lane be the first thing from the remaining path, discard the
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path, and reset the dist_along to 0.
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2019-03-12 21:44:15 +03:00
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2019-03-13 02:31:54 +03:00
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(this section got weird -- talk about controls first, brief bit of kinematics,
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then state. follow along curve of lanes automatically.)
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2019-03-12 21:44:15 +03:00
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### Constraints
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2019-03-13 02:31:54 +03:00
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What kind of things influence a driver's decision each timestep, and what do
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they need to be able to sense about their environment to use the rule? I can
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think of three:
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2019-03-12 21:44:15 +03:00
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2019-03-13 02:31:54 +03:00
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1. Don't exceed the speed limit of the current road
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2019-03-12 21:44:15 +03:00
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2019-03-13 02:31:54 +03:00
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- so the driver needs to be able to look at the speed limit of the current road
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2. Don't hit the car in front of me
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- need to see the current dist_along, speed, length, accel and deaccel of the
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next car in the queue
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- actually, humans can't eyeball another car and know how quickly it can speed
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up or slow down. maybe they just assume some reasonable safe estimate.
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3. Maybe stop at the end of the lane
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- for stop signs or red/yellow lights
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And of course, whatever acceleration the driver picks gets clamped by their
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physical limits. Other than these constraints, let's assume every driver will
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want to go as fast as possible and isn't trying to drive smoothly or hyper-mile.
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Not realistic, but makes our lives easier. So if each of these three constraints
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gives an acceleration, we have to pick the smallest one to be safe. Rule 1 says
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hit the gas and go 5m/s^2, but rule 2 says we can safely go 2m/s^2 and not hit
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the next car and rule 3 actually says wait, we need to hit the brakes and go
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-1m/s^2 right now. Have to go with rule 3.
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2019-03-12 21:44:15 +03:00
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### Some math
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Skip this section freely. The takeaways are:
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- there's a way to figure out the acceleration to obey the 3 constraints
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2019-03-13 02:31:54 +03:00
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- the math gets tricky because (1) the car will only be doing that acceleration
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for 0.1s and then getting to act again, and (2) floating point math is tricky
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2019-03-12 21:44:15 +03:00
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### Lookahead
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2019-03-10 19:34:56 +03:00
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lookahead (worst case analyses), cover multiple lane->turn->lanes maybe
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### Retrospective
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2019-03-13 02:31:54 +03:00
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1. It's fundamentally slow; there's lots of busy work. Cars in freeflow with
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nothing blocking them yet, or cars
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2. Figuring out acceleration in order to do something for the next tick is
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complicated.
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2019-03-10 19:34:56 +03:00
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2019-03-13 02:31:54 +03:00
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- floating pt bugs, apply accel but make sure speed doesnt go negative or dist
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doesnt exceed end of lane if they were supposed to stop... wind up storing an
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intent of what they wanted to do, make corrections based on that. hacky.
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2019-03-10 19:34:56 +03:00
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2019-03-13 02:31:54 +03:00
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3. The realism of having cars accel and deaccel doesnt really add much, and
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since the approach has silly assumptions anyway (slam on brakes and
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accelerator as much as possible), unrealistic
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2019-03-10 19:34:56 +03:00
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## Discrete-event model take 1: time-space intervals
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2019-03-11 23:21:53 +03:00
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things that were not finished / still hard:
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- cover a short lane
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- real quadratic distance over time was breaking stuff
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- impossible accel/deaccel happened
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- faster lead car made adjusting follower very hard
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2019-03-10 19:34:56 +03:00
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## Discrete-event model take 2
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Let's try again, but even simpler and more incremental this time.
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### v0: one car
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2019-03-13 02:31:54 +03:00
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Forget about speed, acceleration, and even multiple cars momentarily. What is a
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car's basic state machine? They enter a lane, travel across it, maybe stop and
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wait for the intersection, execute a turn through the intersection, and then
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enter the next lane. We could assign reasonable times for each of these --
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crossing a lane takes lane_distance / min(road's speed limit, car's max speed)
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at minimum. Intersections could become responsible for telling cars when to move
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-- stop signs would keep a FIFO queue of waiting cars and wake up each car as
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the last one completes their turn, while traffic signals could wake up all
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relevant cars when the cycle changes.
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2019-03-10 19:34:56 +03:00
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### v1: queueing
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2019-03-13 02:31:54 +03:00
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Alright, but what about multiple cars? In one lane, they form a queue -- no
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over-taking or lane-changing. The FSM doesn't get much more complicated: a car
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enters a lane, spends at least the freeflow_time to cross it, and then either
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winds up front of the queue or behind somebody else. If they're in the front,
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similar logic from before applies -- except they first need to make sure the
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target lane they want to turn to has room. Maybe cars are already backed up all
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the way there. If so, they could just wait until that target lane has at least
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one car leave. When the car is queued behind another, they don't have anything
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interesting to do until they become the queue's lead vehicle.
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Another way to understand this system is to picture every lane as having two
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parts -- the empty portion where cars cross in freeflow and a queue at the end.
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Cars have to pay a minimum amount of time to cross the lane, and then they wind
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up in the queue. The time to go from the end of the queue to the front requires
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crunching through the queue front-to-back, figuring out when each successive
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lead vehicle can start their turn and get out of the way.
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2019-03-10 19:34:56 +03:00
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### Drawing
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2019-03-13 02:31:54 +03:00
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An intermission -- we haven't pinned down exactly where cars are at some point
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in time, so how do we draw them? The idea for this DES model began without
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worrying about this too much -- when the map is zoomed out, individual cars are
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hard to see anyway; the player probably just wants to know roughly where lots of
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cars are moving and stuck waiting. This can be calculated easily at any time --
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just count the number of cars in each queue and see if they're in the Crossing
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or Queued state.
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But when zoomed in, we do want to draw individual cars at exact positions
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through time! Luckily, this isn't hard at all. The only change from the timestep
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model is that we have to process a queue at a time; we can't randomly query an
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individual car. This is fine from a performance perspective -- we almost always
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want to draw all cars on lanes visible on-screen anyway.
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So how does it work? First consider the queue's lead vehicle. If they're Queued,
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then the front of the car must be at the end of the lane waiting to turn. If
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they're Crossing, then we can just linearly interpolate their front position
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from (0, lane_length) using the time-interval of their crossing and the current
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time. Then we consider the queue's second car. In an ideal world where they're
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the lead car, we do the same calculation based on Queued or Crossing state. But
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the second car is limited by the first. So as we process the queue, we track the
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bound -- a car's front position + the car's length + a fixed following distance
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of 1m. The second car might be farther back, or directly following the first and
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blocked by them. We just take min(ideal distance, bound), and repeat for the
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third car.
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2019-03-10 19:34:56 +03:00
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### v2: preventing discontinuities
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2019-03-13 02:31:54 +03:00
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There's an obvious problem happening when the lead vehicle of a queue leaves the
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queue -- everybody queued behind them suddenly jump forward. Discontinuities
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like this are of course unrealistic, but more importantly for A/B St's purpose,
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looks confusing to watch. So let's try a simple fix: when a lead car exits a
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queue, update its follower to know to cross the remaining distance properly. The
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follower might be Queued right behind the lead, or they might still be Crossing.
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If they're still Crossing, no worries -- they'll continue to smoothly Cross to
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the end of the lane. But if they're Queued, then reset the follower to Crossing,
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but instead make them cover a smaller distance -- (lane_length - lead car's
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length - FOLLOWING_DISTANCE, lane_length), using the usual min(lane speed limit,
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car's max speed). Since they're Queued, we know that's exactly where the
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follower must be.
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This smoothness comes at a price -- instead of a car taking one event to cross a
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lane, it now might go through a bunch of Crossing states -- the lane's max
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capacity for vehicles, at worst. That's not so bad, and it's worth it though.
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2019-03-10 19:34:56 +03:00
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### v3: starting and stopping early
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2019-03-13 02:31:54 +03:00
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The basic traffic model is now in-place. As we add more elements of A/B Street
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in, we need one last tweak to the driving model. Cars don't always enter a lane
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at the beginning or exit at the very end. Cars sometimes start in the middle of
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a lane by exiting an adjacent parking spot. They sometimes end in the middle of
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a lane, by parking somewhere. And buses will idle in the middle of a lane,
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waiting at a bus stop for some amount of time.
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When we update a car, so far we've never needed to calculate exact distances of
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everybody on the queue at that time. That's just for drawing. But now, we'll
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actually need those distances in two cases: when a car is finished parking or
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when a car is somewhere along their last lane. (Note that buses idling at a stop
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satisfy this second case -- when they leave the stop, they start following a new
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path to the next stop.) When the lead car vanishes from the driving lane (by
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shifting into the adjacent parking spot, for example), we simply update the
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follower to the Crossing state, starting at the exact position they are at that
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time (because we calculated it). If they were Queued behind the vanishing car,
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we know their exact position without having to calculate all of them. But
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Crossing cars still paying the minimum time to cross the lane might jump forward
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when the car in front vanishes. To prevent this, we refresh the Crossing state
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to explicitly start from where they became unblocked.
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2019-03-10 19:34:56 +03:00
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### Remaining work
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2019-03-13 02:31:54 +03:00
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There's one more discontinuity remaining. Since cars have length, they can
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occupy more than one lane at a time. When the lead car leaves a queue, the
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follower is updated to cross the remaining distance to the end. But if the
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leader is moving slowly through their turn, then the follower will actually hit
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the back end of the lead vehicle! We need a way to mark that the back of a
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vehicle is still in the queue. Maybe just tracking the back of cars would make
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more sense? But intersections need to know when a car has started a turn, and
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cars spawning on the next lane might care when the front (but not back) of a car
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is on the new lane. So maybe we just need to explicitly stick a car in multiple
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queues at a time and know when to update the follower on the old lane. Except
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knowing when the lead car has advanced some minimum distance into the new lane
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seemingly requires calculating exact distances frequently!
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This jump bug also happens when a lead car vanishes at a border node. They
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vanish when their front hits the border, even though they should really only
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vanish when their back makes it through.
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The other big thing to fix is blind retries. In almost all cases, we can
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calculate exactly when to update a car. Except for three:
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1. Car initially spawning, but maybe not room to start. Describe the rules for
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that anyway.
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2. Car on the last lane, but haven't reached end_distance yet. Tried a more
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accurate prediction thing, but it caused more events than a blind retry of
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5s.
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3. Cars waiting to turn, but not starting because target lane is full. Could
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register a dependency and get waked up when that queue's size falls below its
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max capacity. Could use this also for gridlock detection.
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2019-03-10 19:34:56 +03:00
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## A/B Street's full simulation architecture
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2019-03-13 02:31:54 +03:00
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start from step(), the master event queue, how each event is dispatched, each
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agent's states
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2019-03-10 19:34:56 +03:00
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2019-03-13 02:31:54 +03:00
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FSM for intersections, cars, peds (need to represent stuff like updating a
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follower, or being updated by a leader)
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2019-03-10 19:34:56 +03:00
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## Appendix
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2019-03-13 02:31:54 +03:00
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pedestrian, transit, bikes, buses, etc limits... overtaking (especially cars and
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bikes on roads)
|
2019-03-12 21:44:15 +03:00
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2019-03-13 02:31:54 +03:00
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Traffic modeling is a complex space, but for the purposes of this article, a
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traffic simulation is a computer program that takes a map with roads and
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intersections and a list of trips (depart from here at this time, go there using
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a car or bus or by foot) and shows where all of the moving agents wind up over
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time. I'm sure you can imagine a great many uses for them both professional and
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nefarious, but our mission today is to understand one particular traffic
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simulation works. A/B Street is a computer game I've been building to experiment
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with the traffic in Seattle. My goal for A/B Street is to make it easy for
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anybody to ask what-if questions.
|
2019-03-12 21:44:15 +03:00
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|
2019-03-13 02:31:54 +03:00
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a/b st is a game, needs performance (city scale -- X road segments, X
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intersections, X agents total), determinism, not complete realism agent-based,
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rule out others complex maps
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2019-03-12 21:44:15 +03:00
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cars, buses, bikes only (things on the road in a queue)
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2019-03-13 02:31:54 +03:00
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abst is a game, what's the essence of scarcity? contention at intersections,
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lanes restricting usage, parking. NOT modeling pedestrians queueing on a
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sidewalk, bc in practice, doesnt happen (except maybe around pike place or at
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festivals). not modeling bike racks at all -- in practice, can lock up within a
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block of destination without effort.
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if modeling big highways, this wouldnt be great. but we're focused on intra-city
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seattle -- modeling phenomena like jam waves not so important. if the player
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does parking->bus lane and the bus moves faster, but more cars circle around
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looking for parking, then the model is sufficiently interesting to answer the
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questions i want. dont need to model stopping distance for that.
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