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Energy management strategy of series hybrid electric bus using nonlinear programming and motor torque distribution : 비선형 계획법 및 모터 토크 분배를 사용한 직렬형 하이브리드 버스의 에너지 관리 전략

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dc.contributor.advisor민경덕-
dc.contributor.author김민재-
dc.date.accessioned2017-07-13T06:17:16Z-
dc.date.available2017-07-13T06:17:16Z-
dc.date.issued2014-08-
dc.identifier.other000000022292-
dc.identifier.urihttps://hdl.handle.net/10371/118420-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 기계항공공학부, 2014. 8. 민경덕.-
dc.description.abstractOne of the most widespread issues with the hybrid electric vehicle is the energy management strategy from the engine to the motor for fuel economy improvement. There are lots of approaches to achieve it, but many of them are hard to apply and/or the mathematical background is so complicated. Furthermore, the sophisticated and complicated strategy usually required an ideal model and environment that the practical application was not available. Therefore, simple rule based strategies are often in use for the real-time applications. Such a tendency was evident in SHEV (Series Hybrid Electric Vehicle) because the structure of SHEV is so simple that those rule based strategies such as thermostat and power follower strategies are considered to be enough for covering the energy flow management from the engine to the battery [1-3].
This research proposes an advanced strategy which overcomes those weaknesses. The strategy proposed in this research fully optimizes the SHEV energy applicable to SHEV that the efficiency of the total system increase by finding the most efficient operating points in each component in the vehicle. The proposed strategy, which uses a semi MPC framework, has its foundation on NLP (Nonlinear Programming) for finding minimum fuel consumption and the speed prediction with intra-city bus was evaluated with the real bus data for the future path plan. Furthermore, the manipulation of command signal (signal synchronization, signal bundling, signal removing & filling up, and zero speed synchronization) and the traction torque distribution in TMU (Traction Motor Unit) were also considered, where the torque distribution made it possible avoid large currents from the battery to the motor during the periods of high loading required in the traction. The performance of the proposed strategy was compared to that of other strategies such as DP (Dynamic Programming), thermostatic strategy, and power follower strategy where DP gives the reference global optimal operating points and thermostat & power follower strategies are the well-known real-time energy distribution strategy. So, the contribution of the proposed techniques could be evaluated.
As a result, the proposed strategy in this paper shows much better fuel economy with the practical, fast, and exact methodology uniquely adapted to series type hybrid electric intra-city bus. All simulation was achieved based on AMEsim and Simulink co-simulation for the non-analytic forward bus model and NLP solver of NPSOL was used for the simulation.
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dc.description.tableofcontentsChapter 1. Introduction 1
1.1 Motivation 1
1.2 Literature Review 7
1.3 Objectives 12
1.4 Contributions 13
Chapter 2. Hybrid Electric Vehicle Modeling 15
2.1 Hybrid Electric Vehicle Structure 15
2.1.1 Series Type Structure 16
2.1.2 Parallel Type Structure 17
2.1.3 Series-Parallel Type Structure 18
2.2 Powertrain Modeling 23
Chapter 3. Existing Strategies 31
3.1 Thermostat Strategy 31
3.2 Power Follower Strategy 34
3.3 Merits and Demerits of Existing Strategies 37
Chapter 4. Proposed Strategy 39
4.1 Overall Concept 39
4.2 Semi Model Predictive Control 42
4.2.1 Variables and Objective 42
4.2.2 Dynamic Programming 45
4.2.3 Semi Model Predictive Control 47
4.3 Nonlinear Programming 51
4.3.1 Unconstrained Optimization 51
4.3.2 Equality Constraints 52
4.3.3 Inequality Constrains 53
4.3.4 SQP (Sequential Quadratic Programming) 53
4.3.5 Problem Reconstruction 53
4.3.6 NLP Starting Point Selections 55
4.4 Future Path Plan 57
4.4.1 Bus Route 57
4.4.2 Speed Prediction Algorithm 60
4.4.3 Wrong Speed Prediction Handling 61
4.5 Signal Manipulation 64
4.5.1 Signal Synchronization 64
4.5.2 Signal Bundling 66
4.5.3 Signal Removing and Filling Up 68
4.5.4 Zero Speed Synchronization 71
4.6 Motor Torque Distribution in MCU 72
4.6.1 Existing Strategy 72
4.6.2 Strategy Concept 72
4.6.3 Procedure 74
Chapter 5. Simulation Results 80
5.1 Engine Generating Power 80
5.2 Battery SoC (State of Charge) 84
5.3 Signal Manipulations 86
5.4 Optimal Torque Distribution 89
5.5 Mode Comparisons 97
5.6 Fuel Economy Comparison 100
Chapter 6. Conclusions 102
Bibliography 103
초 록 111
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dc.formatapplication/pdf-
dc.format.extent4143725 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectDiesel driven generators-
dc.subjectEnergy management-
dc.subjectOptimal control-
dc.subjectPower generation control-
dc.subjectReal time systems-
dc.subjectSeries Hybrid Electric Vehicle-
dc.subject.ddc621-
dc.titleEnergy management strategy of series hybrid electric bus using nonlinear programming and motor torque distribution-
dc.title.alternative비선형 계획법 및 모터 토크 분배를 사용한 직렬형 하이브리드 버스의 에너지 관리 전략-
dc.typeThesis-
dc.contributor.AlternativeAuthorMinjae Kim-
dc.description.degreeDoctor-
dc.citation.pagesxvi, 111-
dc.contributor.affiliation공과대학 기계항공공학부-
dc.date.awarded2014-08-
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