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LIBRIS Formathandbok  (Information om MARC21)
FältnamnIndikatorerMetadata
00004552nam a2200373 4500
001oai:DiVA.org:kth-227713
003SwePub
008180511s2018 | |||||||||||000 ||eng|
020 a 9789177297581q print
024a https://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-2277132 URI
040 a (SwePub)kth
041 a engb eng
042 9 SwePub
072 7a vet2 swepub-contenttype
072 7a dok2 swepub-publicationtype
100a Jin, Junchenu KTH,Transportplanering, ekonomi och teknik4 aut0 (Swepub:kth)u1mcg76o
2451 0a Advance Traffic Signal Control Systems with Emerging Technologies
264 1a Stockholm :b KTH Royal Institute of Technology,c 2018
338 a electronic2 rdacarrier
490a TRITA-ABE-DLT ;v 189
520 a Nowadays, traffic congestion poses critical problems including the undermined mobility and sustainability efficiencies. Mitigating traffic congestions in urban areas is a crucial task for both research and in practice. With decades of experience in road traffic controls, there is still room for improving traffic control measures; especially with the emerging technologies, such as artificial intelligence (AI), the Internet of Things (IoT), and Big Data. The focus of this thesis lies in the development and implementation of enhanced traffic signal control systems, one of the most ubiquitous and challenging traffic control measures.This thesis makes the following major contributions. Firstly, a simulation-based optimization framework is proposed, which is inherently general in which various signal control types, and different simulation models and optimization methods can be integrated. Requiring heavy computing resources is a common issue of simulation-based optimization approaches, which is addressed by an advanced genetic algorithm and parallel traffic simulation in this study.The second contribution is an investigation of an intelligent local control system. The local signal control operation is formulated as a sequential decision-making process where each controller or control component is modeled as an intelligent agent. The agents make decisions based on traffic conditions and the deployed road infrastructure, as well as the implemented control scheme. A non-parametric state estimation method and an adaptive control scheme by reinforcement learning (RL) are introduced to facilitate such an intelligent system.The local intelligence is expanded to an arterial road using a decentralized design, which is enabled by a hierarchical framework. Then, a network of signalized intersections is operated under the cooperation of agents at different levels of hierarchy. An agent at a lower level is instructed by the agent at the next higher level toward a common operational goal. Agents at the same level can communicate with their neighbors and perform collective behaviors.Additionally, a multi-objective RL approach is in use to handle the potential conflict between agents at different hierarchical levels. Simulation experiments have been carried out, and the results verify the capabilities of the proposed methodologies in traffic signal control applications. Furthermore, this thesis demonstrates an opportunity to employ the systems in practice when the system is programmed on an intermediate hardware device. Such a device can receive streaming detection data from signal controller hardware or the simulation environment and override the controlled traffic lights in real time.
650 7a TEKNIK OCH TEKNOLOGIERx Samhällsbyggnadsteknikx Transportteknik och logistik0 (SwePub)201052 hsv//swe
650 7a ENGINEERING AND TECHNOLOGYx Civil Engineeringx Transport Systems and Logistics0 (SwePub)201052 hsv//eng
650 7a NATURVETENSKAPx Data- och informationsvetenskapx Datavetenskap0 (SwePub)102012 hsv//swe
650 7a NATURAL SCIENCESx Computer and Information Sciencesx Computer Sciences0 (SwePub)102012 hsv//eng
653 a Transportvetenskap
653 a Transport Science
700a Ma, Xiaoliang,c Docentu KTH,Transportplanering, ekonomi och teknik4 ths0 (Swepub:kth)u1i7xzbr
700a Kosonen, Iisakkiu Aalto University4 ths
700a Pettersson, Henriku Scania4 ths
700a Cheu, Ruey Long (Kelvin),c Professoru The University of Texas at El Paso4 opn
710a KTHb Transportplanering, ekonomi och teknik4 org
856u https://kth.diva-portal.org/smash/get/diva2:1205236/FULLTEXT01.pdfx primaryx Raw objecty fulltext
8564 8u https://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-227713

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