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Sampling-based Motion Planning Approaches for Autonomous Vehicle in Narrow Cluttered Spaces : 협소하고 복잡한 환경에서 자율 주행을 위한 샘플링 기반 모션 계획 방법

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dc.contributor.advisor박재흥-
dc.contributor.author신세호-
dc.date.accessioned2017-10-27T17:03:05Z-
dc.date.available2017-10-27T17:03:05Z-
dc.date.issued2017-08-
dc.identifier.other000000146056-
dc.identifier.urihttps://hdl.handle.net/10371/137042-
dc.description학위논문 (박사)-- 서울대학교 융합과학기술대학원 융합과학부, 2017. 8. 박재흥.-
dc.description.abstractAutonomous vehicles are being actively developed for fully autonomous driving without driver intervention. Motion planning is one of the most key technologies in terms of driving safety and efficiency. In particular, the motion planning in constrained narrow space such as a parking lot is very challenging because it requires many changes in forward and backward directions and adjustments of position and orientation of the vehicle. In this thesis, a sampling-based motion planning algorithm is proposed based on Rapidly-exploring Random Trees (RRT, RRT*) by specifying desired orientation during the tree expansion and the rewiring step. The contribution is as follows. First, efficient sampling method is proposed for narrow-cluttered area. In this area, the probability of obtaining a sample to pass through the area due to the obstacle area is relatively low than an open area. It may also fail to extend the path if sampled position is difficult to extend from near nodes. To solve this problem, a constraint model on the tangential direction of the random sample is proposed. Second, we propose an extension method based on tangential direction constraint. In the process of expanding the tree to random samples, a large number of nodes in narrow-cluttered regions cannot pass the collision test. This increases unnecessary iteration numbers and increases memory usage. To solve this problem, we propose a node extension method based on gradient descent.
The proposed algorithm has been tested in various situations and its results demonstrated much faster target path search and convergence to the optimal path than the existing nonholonomic RRT*.
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dc.description.tableofcontentsI. Introduction 1
1.1 Autonomous Vehicles 1
1.2 Planning System of Autonomous Vehicles 2
1.3 Contribution of Thesis 4
II. Related Works 6
2.1 Motion Planning for Aunomous Vehicles 6
2.2 Sampling-based Motion Planning Algorithms 9
III. Sampling-based Kinodynamic Motion Planning Algorithm for Narrow Cluttered Environments 14
3.1 Overview 14
3.2 Preliminary Definition 15
3.2.1 Problem Statements 15
3.2.2 Autonomous Vehicle Model 16
3.3 Kinodynamic RRT and Limitations 16
3.3.1 Overview of DO-RRT Algorithm 20
3.4 Magnetic-like Field based Desired Orientation Model 20
3.4.1 Magnet-like Field Model 22
3.4.2 Pfaffian Constraints 24
3.4.3 DO(Desired Orientation) Model 26
3.5 Sampling Fuction of DO-RRT 28
3.6 Extend Function of DO-RRT 30
3.7 Experimental Results 31
3.7.1 Experimental Condition 31
3.7.2 Simulation Test Results 32
3.7.3 Vehicle Test Results 34
IV. Sampling-based Geometric Motion Planning Algorithm for Narrow Cluttered Environments 38
4.1 Overview 38
4.2 Backgrounds 39
4.2.1 Algorithm Description and Limitations 39
4.2.2 Overview of Proposed Algorithm 42
4.3 Desired Orientation based Random Sampling Method 44
4.4 Desired Orientation based Extend Method 47
4.5 Analysis 49
4.5.1 Probabilistic Completeness 49
4.5.2 Asymptotic Optimality 51
4.5.3 Configuration Space Analysis 53
4.6 Experimental Results 58
4.6.1 Experimental Condition 59
4.6.2 The Result of Desired Orientation-RRT Planner 59
4.6.3 Result of Desired Orientation-RRT 65
V. Experimental Platform Development 71
5.1 Hardware Architecture 71
5.2 Software Architecture 73
5.3 Valet Parking System 74
5.3.1 Perception System 75
5.3.2 Localization System 76
5.3.3 Planning System 77
5.3.4 Control System 79
5.4 Experimental Validation 81
VI. Conclusion 85
Bibliography 86
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dc.formatapplication/pdf-
dc.format.extent29426706 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 융합과학기술대학원-
dc.subjectAutonomous Vehicle-
dc.subjectMotion Planning-
dc.subjectRapidly-exploring Random Tree-
dc.subjectNonholonomic Path Planning-
dc.subject.ddc620.5-
dc.titleSampling-based Motion Planning Approaches for Autonomous Vehicle in Narrow Cluttered Spaces-
dc.title.alternative협소하고 복잡한 환경에서 자율 주행을 위한 샘플링 기반 모션 계획 방법-
dc.typeThesis-
dc.description.degreeDoctor-
dc.contributor.affiliation융합과학기술대학원 융합과학부-
dc.date.awarded2017-08-
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