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  1. NTU Theses and Dissertations Repository
  2. 工學院
  3. 機械工程學系
Please use this identifier to cite or link to this item: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99267
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???org.dspace.app.webui.jsptag.ItemTag.dcfield???ValueLanguage
dc.contributor.advisor黃漢邦zh_TW
dc.contributor.advisorHan-Pang Huangen
dc.contributor.author董燦霆zh_TW
dc.contributor.authorTsan-Ting Dongen
dc.date.accessioned2025-08-21T17:03:04Z-
dc.date.available2025-08-22-
dc.date.copyright2025-08-21-
dc.date.issued2025-
dc.date.submitted2025-08-05-
dc.identifier.citation[1] "3d Cad Design Software | Solidworks." http://www.solidworks.com/ (accessed July, 2025).
[2] "Adafruit Circuitpython Pcf8591." https://github.com/adafruit/Adafruit_CircuitPython_PCF8591 (accessed 2025).
[3] "Adafruit Pcf8591 Quad 8-Bit Adc + 8-Bit Dac - Stemma Qt / Qwiic." https://www.adafruit.com/product/4648 (accessed 2025).
[4] "Air Pump (St45v300)." https://www.symtek.com.tw/product/pumtek-vacuum-pumps/ (accessed 2025).
[5] "Ansys." https://www.ansys.com/zh-tw (accessed 2025).
[6] "Bullet Physics." http://bulletphysics.org/wordpress/ (accessed 2025).
[7] "Flex Sensor Spectrasymbol 2.2″ " https://www.taiwaniot.com.tw/product/flex-sensor-spectrasymbol-2-2-%E5%BD%8E%E6%9B%B2%E6%84%9F%E6%B8%AC%E5%99%A8-sparkfun-%E5%8E%9F%E8%A3%9D%E9%80%B2%E5%8F%A3/ (accessed 2025).
[8] "Force Sensitive Resistor 402." https://www.taiwansensor.com.tw/product/force-sensitive-resistor-0-5/ (accessed 2025).
[9] "Internal Covariate Shift: How Batch Normalization Can Speed up Neural Network Training." https://medium.com/analytics-vidhya/internal-covariate-shift-an-overview-of-how-to-speed-up-neural-network-training-3e2a3dcdd5cc (accessed 2025).
[10] "Matlab - Mathworks." https://www.mathworks.com/products/matlab.html (accessed June, 2025).
[11] "Msc Software: Adams." http://www.mscsoftware.com/product/adams (accessed June, 2025).
[12] "Netron." https://netron.app/ (accessed 2025).
[13] "Pressure Transmitter | Sptw-B11r-G14-Vd-M12." https://www.festo.com/tw/en/a/8000110/?siteUid=fox_tw&siteName=Festo+TW (accessed 2025).
[14] "Proportional Pressure Regulator | Veab-B-26-D18-F-V2-1r1." https://www.festo.com/tw/zh/a/8153679/?siteUid=fox_tw&siteName=Festo+TW (accessed 2025).
[15] "Raspberry Pi 4." https://www.raspberrypi.com/products/raspberry-pi-4-model-b/ (accessed 2025).
[16] "Relu." https://pytorch.org/docs/stable/generated/torch.nn.ReLU.html (accessed 2025).
[17] "Twincat3." https://www.beckhoff.com/zh-tw/ (accessed 2025).
[18] "Z-N Method." https://en.wikipedia.org/wiki/Ziegler%E2%80%93Nichols_method (accessed 2025).
[19] M. Agrawal, M. Mishra, and S. P. S. Kushwah, "Association Rules Optimization Using Improved Pso Algorithm," 2015 International Conference on Communication Networks (ICCN), pp. 395-398, 2015.
[20] H. M. Asifa and S. R. Vaishnav, "Particle Swarm Optimisation Algorithm Based Pid Controller," 2010 3rd International Conference on Emerging Trends in Engineering and Technology, pp. 628-631, 2010.
[21] M. Awais, M. T. B. Iqbal, and S. H. Bae, "Revisiting Internal Covariate Shift for Batch Normalization," IEEE Transactions on Neural Networks and Learning Systems, Vol. 32, No. 11, pp. 5082-5092, 2021.
[22] B. Badidová, R. Forgáč, and M. Očkay, "The Pca and 1d-Cnn Dimension Reduction Comparison for Hyperspectral Classification of Tree Species," 2024 New Trends in Signal Processing (NTSP), pp. 1-5, 2024.
[23] X. Cao, K. Ma, Z. Jiang, and F. Xu, "A Soft Robotic Glove for Hand Rehabilitation Using Pneumatic Actuators with Jamming Structure," 2021 40th Chinese Control Conference (CCC), pp. 4120-4125, 2021.
[24] S.-H. Chen, "Soft Robot Hands Development and Control for a Robot Dual Hand-Arm System," Master, Graduate Institute of Mechanical Engineering, National Taiwan University, 2022.
[25] S. Chen, M. Wang, Y. Guan, J. Cheng, D. Zhao, Z. Wu, Z. Liu, and Z. Zhao, Transformer-Based Soft Robot Constrained Position Recognition with Multimodal Sensing, pp. 105-110, 2024.
[26] V. K. Chen, L. Chin, J. Choi, A. Zhang, and D. Rus, "Real- Time Grocery Packing by Integrating Vision, Tactile Sensing, and Soft Fingers," 2024 IEEE 7th International Conference on Soft Robotics (RoboSoft), pp. 392-399, 2024.
[27] C. Choi, W. Schwarting, J. DelPreto, and D. Rus, "Learning Object Grasping for Soft Robot Hands," IEEE Robotics and Automation Letters, Vol. 3, No. 3, pp. 2370-2377, 2018.
[28] R. R. Choudhury, S. Dey, and P. Paul, "A Comparative Study of Lstm Models on Sentiment Analysis," 2024 6th International Conference on Computational Intelligence and Networks (CINE), pp. 1-6, 2024.
[29] R. Cui, Z. Li, and Y. Song, "Electronic Skin and Its Application in Soft Biomimetic Robots," 2023 International Conference on Telecommunications, Electronics and Informatics (ICTEI), pp. 208-212, 2023.
[30] H. Dong, S. Yang, and S. Li, "Application and Research of One-Dimensional Convolutional Neural Network in Intelligent Stratification in Oilfield," 2023 8th International Conference on Intelligent Computing and Signal Processing (ICSP), pp. 880-883, 2023.
[31] S. Draw. "Fam 3d Silicone Printing." https://www.sandraw.com/ (accessed 2025).
[32] S. Draw. "Is 3d Printing Soft Grippers Really Possible? The Most Detailed Guide to Printing Soft Grippers!" https://www.youtube.com/watch?v=BMrmx9j6OR0&ab_channel=SanDraw (accessed 2025).
[33] S. Draw. "S300 3 Dimensions Printer." https://www.sandraw.com/s300 (accessed 2025).
[34] S. Dutta, M. Neog, and N. Baruah, "Towards Safer Social Spaces: Lstm, Bi-Lstm and Hybrid Approach for Cyberbullying Detection in Assamese Language on Social Networks," 2024 Second International Conference on Emerging Trends in Information Technology and Engineering (ICETITE), pp. 1-6, 2024.
[35] T. Feix, J. Romero, H. B. Schmiedmayer, A. M. Dollar, and D. Kragic, "The Grasp Taxonomy of Human Grasp Types," IEEE Transactions on Human-Machine Systems, Vol. 46, No. 1, pp. 66-77, 2016.
[36] T. Fidinillah, A. G. Risangtuni, N. K. Putra, V. Virdyawan, S. Suprijanto, and S. M. Putri, "Design of Soft Pneumatic Actuator in Hand Rehabilitation Robot with Fem-Based Modeling," 2023 8th International Conference on Instrumentation, Control, and Automation (ICA), pp. 109-113, 2023.
[37] K. S. Gill, V. Anand, R. Chauhan, A. Choudhary, and R. Gupta, "Cnn, Lstm, and Bi-Lstm Based Self-Attention Model Classification for User Review Sentiment Analysis," 2023 3rd International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON), pp. 1-6, 2023.
[38] T. Hao, H. Xiao, M. Ji, Y. Liu, and S. Liu, "Integrated and Intelligent Soft Robots," IEEE Access, Vol. 11, pp. 99862-99877, 2023.
[39] P. S. Hitha, G. K. Ragesh, and R. Anish, "Comparison of Image Compression Analysis Using Deep Autoencoder and Deep Cnn Approach," 2021 2nd International Conference on Advances in Computing, Communication, Embedded and Secure Systems (ACCESS), pp. 247-251, 2021.
[40] F. Hmeyda and F. Bouani, "Camera-Based Autonomous Mobile Robot Path Planning and Trajectory Tracking Using Pso Algorithm and Pid Controller," 2017 International Conference on Control, Automation and Diagnosis (ICCAD), pp. 203-208, 2017.
[41] Y. Hotoda and K. Ito, "Octopus-Like Soft Robot Hand for Handling Vegetables and Fruits," 2023 International Conference on Advanced Mechatronic Systems (ICAMechS), pp. 13-18, 2023.
[42] Y.-C. Hsiao, "Strategy of Using a Multi-Fingered Hand to Grasp a Thin Object," Master, Graduate Institute of Mechanical Engineering, National Taiwan University, 2015.
[43] K. Inoue, "Expressive Numbers of Two or More Hidden Layer Relu Neural Networks," 2019 Seventh International Symposium on Computing and Networking Workshops (CANDARW), pp. 129-135, 2019.
[44] K. Ishibashi, H. Ishikawa, O. Azami, and K. Yamamoto, "Modeling of Hydraulic Soft Hand with Rubber Sheet Reservoir and Evaluation of Its Grasping Flexibility and Control," 2024 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), pp. 229-234, 2024.
[45] M. Jiang and Y. Chen, "Research on Bayesian Optimization Algorithm Selection Strategy," The 2010 IEEE International Conference on Information and Automation, pp. 2424-2427, 2010.
[46] J. Jo, S. Hwang, S. Lee, and Y. Lee, "Multi-Mode Lstm Network for Energy-Efficient Speech Recognition," 2018 International SoC Design Conference (ISOCC), pp. 133-134, 2018.
[47] A. H. Khan, Z. Shao, S. Li, Q. Wang, and N. Guan, "Which Is the Best Pid Variant for Pneumatic Soft Robots? An Experimental Study," IEEE/CAA Journal of Automatica Sinica, Vol. 7, No. 2, pp. 451-460, 2020.
[48] J. Kim, S. Kim, and S. Lim, "Performance Evaluation of Data Imputation Methods for Graph Deep Learning-Based Traffic Prediction," 2023 IEEE International Conference on Big Data (BigData), pp. 6192-6194, 2023.
[49] X. Liu, J. Yin, J. Liu, P. Ding, J. Liu, and H. Liu, "Trajectorycnn: A New Spatio-Temporal Feature Learning Network for Human Motion Prediction," IEEE Transactions on Circuits and Systems for Video Technology, Vol. 31, No. 6, pp. 2133-2146, 2021.
[50] Y. Liu, "Soft Robot Review: Actuation and Application," 2022 International Conference on Electronics and Devices, Computational Science (ICEDCS), pp. 23-26, 2022.
[51] Y. J. Liu, Y. D. Lee, C. Y. Lee, C. C. Cheng, P. Y. Hou, and Y. F. Chen, "A Comparative Analysis of Lstm and Bilstm Network-Based Methods in Pv Power Prediction," 2022 IET International Conference on Engineering Technologies and Applications (IET-ICETA), pp. 1-2, 2022.
[52] H. Ma, D. Liu, R. Xiong, and F. Wu, "A Cnn-Based Image Compression Scheme Compatible with Jpeg-2000," 2019 IEEE International Conference on Image Processing (ICIP), pp. 704-708, 2019.
[53] Y. Ma, R. Guo, M. Li, F. Yang, S. Xu, and A. Abubakar, "Supervised Descent Method for 2d Magnetotelluric Inversion Using Adam Optimization," 2019 International Applied Computational Electromagnetics Society Symposium - China (ACES), Vol. 1, pp. 1-2, 2019.
[54] G. S. Mahara and S. Gangele, "Fake News Detection: A Rnn-Lstm, Bi-Lstm Based Deep Learning Approach," 2022 IEEE 1st International Conference on Data, Decision and Systems (ICDDS), pp. 01-06, 2022.
[55] D. Maruyama, K. Kanai, and J. Katto, "Performance Evaluations of Channel Estimation Using Deep-Learning Based Super-Resolution," 2021 IEEE 18th Annual Consumer Communications & Networking Conference (CCNC), pp. 1-6, 2021.
[56] A. Mazumder, "Reinforcement Learning Based Controller for a Soft Continuum Robot," 2023 International Conference on Big Data, Knowledge and Control Systems Engineering (BdKCSE), pp. 1-6, 2023.
[57] A. E. Minarno, K. M. Ghufron, T. S. Sabrila, L. Husniah, and F. D. S. Sumadi, "Cnn Based Autoencoder Application in Breast Cancer Image Retrieval," 2021 International Seminar on Intelligent Technology and Its Applications (ISITIA), pp. 29-34, 2021.
[58] A. N, S. S. N. P, R. R, and R. K. G, "Bi-Lstm Model Based Real-Time Rainfall Prediction," 2023 Second International Conference on Augmented Intelligence and Sustainable Systems (ICAISS), pp. 1078-1081, 2023.
[59] P. Nagaraj, V. Muneeswaran, M. Raja, J. Visal, B. R. Kumar, and P. R. Yaswanth, "Deep Learning-Based Classification of Flowers Using Flowernet Model," 2023 International Conference on Data Science, Agents & Artificial Intelligence (ICDSAAI), pp. 1-7, 2023.
[60] D. Naik and C. D. Jaidhar, "A Novel Multi-Layer Attention Framework for Visual Description Prediction Using Bidirectional Lstm," Journal of Big Data, Vol. 9, No. 1, p. 104, 2022.
[61] T. T. Nguyen, N. L. Tao, V. T. Nguyen, N. T. Bui, V. H. Nguyen, and D. Watanabe, "Apply Pso Algorithm with Searching Space Improvements on a 5 Degrees of Freedom Robot," 2020 3rd International Conference on Intelligent Robotic and Control Engineering (IRCE), pp. 75-80, 2020.
[62] T. H. Noventino, M. R. Rosa, and A. Z. Fuadi, "Pid Control Design and Kinematic Modelling of 3-Dof Robot Manipulator," 2022 International Conference on Electrical Engineering, Computer and Information Technology (ICEECIT), pp. 88-94, 2022.
[63] C.-W. Ou Yang, S.-Y. Yu, C.-W. Chan, C.-Y. Tseng, J.-F. Cai, H.-P. Huang, and J.-Y. Juang, "Enhancing the Versatility and Performance of Soft Robotic Grippers, Hands, and Crawling Robots through Three-Dimensional-Printed Multifunctional Buckling Joints," Soft Robotics, Vol. 11, No. 5, pp. 741-754, 2024.
[64] D. Pang and X. Le, "Indoor Localization Using Bidirectional Lstm Networks," 2021 13th International Conference on Advanced Computational Intelligence (ICACI), pp. 154-159, 2021.
[65] F. F. Parsa, A. A. A. Moghadam, D. Stollberg, A. Tekes, C. Coates, and T. Ashuri, "A Novel Soft Robotic Hand for Prosthetic Applications," 2022 IEEE 19th International Conference on Smart Communities: Improving Quality of Life Using ICT, IoT and AI (HONET), pp. 1-6, 2022.
[66] Y. Pei, Y. Huang, Q. Zou, X. Zhang, and S. Wang, "Effects of Image Degradation and Degradation Removal to Cnn-Based Image Classification," IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 43, No. 4, pp. 1239-1253, 2021.
[67] D. Perdios, M. Vonlanthen, F. Martinez, M. Arditi, and J. P. Thiran, "Cnn-Based Image Reconstruction Method for Ultrafast Ultrasound Imaging," IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control, Vol. 69, No. 4, pp. 1154-1168, 2022.
[68] M. A. Saleh, M. Soliman, H. H. Ammar, and M. A. W. Shalaby, "Modeling and Control of 3-Omni Wheel Robot Using Pso Optimization and Neural Network," 2020 International Conference on Control, Automation and Diagnosis (ICCAD), pp. 1-6, 2020.
[69] L. Schramm, A. Sintov, and A. Boularias, "Learning to Transfer Dynamic Models of Underactuated Soft Robotic Hands," 2020 IEEE International Conference on Robotics and Automation (ICRA), pp. 4579-4585, 2020.
[70] P. Siagian and E. Fernando, "Long Short Term Memory Networks for Stroke Activity Recognition Base on Smartphone," 2021 IEEE 5th International Conference on Information Technology, Information Systems and Electrical Engineering (ICITISEE), pp. 18-23, 2021.
[71] S. Siami-Namini, N. Tavakoli, and A. S. Namin, "The Performance of Lstm and Bilstm in Forecasting Time Series," 2019 IEEE International Conference on Big Data (Big Data), pp. 3285-3292, 2019.
[72] S. Singh, H. R. U, K. B. H, S. Arya, P. Singh, and L. N, "Enhancing Mobile Robot Speed Control: Pid Controller Optimization with Bio-Inspired Algorithms," 2024 International Conference on Expert Clouds and Applications (ICOECA), pp. 365-370, 2024.
[73] X. Tang and L. Manamanchaiyaporn, "Magnetic-Powered Swimming Soft-Milli Robot Towards Non-Invasive Applications," 2022 8th International Conference on Control, Decision and Information Technologies (CoDIT), Vol. 1, pp. 1562-1566, 2022.
[74] A. Taufiq, S. Yulianti, A. Rahmatulloh, I. Darmawan, and R. Rizal, "Comparison of Hyperparameter Tuning Techniques on Knn Algorithm to Find the Best K Value Using Grid Search and Random Search Methods," 2024 7th International Seminar on Research of Information Technology and Intelligent Systems (ISRITI), pp. 180-186, 2024.
[75] J.-H. Tsai, "Position-Based Impedance Control for the Grasping of a Robot Hand-Arm System with Position Uncertainty," Master, Graduate Institute of Mechanical Engineering, National Taiwan University, 2017.
[76] Tuxfamily. "Eigen Library." <http://eigen.tuxfamily.org> (accessed 2025).
[77] M. S. A. Vigil, A. Christofer, M. Chandar, and J. Mukesh, "Comparative Analysis of Machine Learning Algorithms for DNA Sequencing," 2023 Winter Summit on Smart Computing and Networks (WiSSCoN), pp. 1-4, 2023.
[78] S. Wahyuningtri, D. Adzkiya, and H. Nurhadi, "Motion Control Design and Analysis of Ur5 Collaborative Robots Using Proportional Integral Derivative (Pid) Method," 2021 International Conference on Advanced Mechatronics, Intelligent Manufacture and Industrial Automation (ICAMIMIA), pp. 157-161, 2021.
[79] H.-Y. Wang, "Interaction System Based on Exercise Assistance and Cognitive Training Game for Older Adults with Mild Cognitive Impairment," Master, Graduate Institute of Mechanical Engineering, National Taiwan University, 2022.
[80] J. Wang and Z. Cao, "Chinese Text Sentiment Analysis Using Lstm Network Based on L2 and Nadam," 2017 IEEE 17th International Conference on Communication Technology (ICCT), pp. 1891-1895, 2017.
[81] L. Wu, Z. Wang, M. Zhao, W. Hu, Y. Cai, and R. Huang, "A High Accuracy Multiple-Command Speech Recognition Asic Based on Configurable One-Dimension Convolutional Neural Network," 2021 IEEE International Symposium on Circuits and Systems (ISCAS), pp. 1-4, 2021.
[82] S. Wu, G. Li, L. Deng, L. Liu, D. Wu, Y. Xie, and L. Shi, "L1 -Norm Batch Normalization for Efficient Training of Deep Neural Networks," IEEE Transactions on Neural Networks and Learning Systems, Vol. 30, No. 7, pp. 2043-2051, 2019.
[83] M. Xia, "A Text Sentiment Analysis Model Based on Bilstm-Conv1d Deep Neural Network," 2025 3rd International Conference on Integrated Circuits and Communication Systems (ICICACS), pp. 1-5, 2025.
[84] F. Xue, D. Wei, Z. Wang, T. Li, Y. Hu, and H. Huang, "Grid Searching Method in Spherical Coordinate for Pd Location in a Substation," 2018 Condition Monitoring and Diagnosis (CMD), pp. 1-5, 2018.
[85] S. Yoshigi, J. Wang, S. Nakayama, and V. A. Ho, "Deep Learning-Based Whole-Arm Soft Tactile Sensation," 2020 3rd IEEE International Conference on Soft Robotics (RoboSoft), pp. 132-137, 2020.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99267-
dc.description.abstract由於其天然的彈性,軟性材料能使機器手指自然而然地順應外力改變彎曲角度,而無需複雜的控制策略,因此在多指機器手領域中越來越受到重視。這種天生的被動順應性確保了機器人與人類以及周圍環境之間的互動安全性。然而,目前的研究仍缺乏將軟手指動力學模型、控制架構、氣動驅動與通訊系統整合於一體的完整方案。因此,本論文旨在建立一個完整的軟性機械手系統。本研究採用了比例-積分-微分控制器,並搭配優化方法,以建立穩定可靠的軟掌控制架構,優化方法為使用粒子群最佳化,藉此尋求最佳比例-積分-微分控制器的參數。此外,本論文介紹了一種利用深度學習技術訓練的軟體機器手臂動力學模型,藉以模擬致動器行為。根據所建立的手指動力模型,進一步提出兩種模型為基礎的控制策略:分別為具感測器回饋以及無感測器回饋的控制方式。為了讓整個手掌系統能實際運作,氣動氣路系統與通訊系統也被統合設計並納入本研究中。最後,透過模擬實驗展示了本系統的效能,說明了不同控制器架構的表現差異、動力模型與控制架構的整合效果,以及在不同抓握方式下手指彎曲角度的變化情形。結果顯示,若將深度學習動力模型與控制器架構進行整合,則可使回饋角度能夠準確追蹤理想角度,誤差極小且震動不明顯,證明本系統具備良好的控制穩定性與實用性。zh_TW
dc.description.abstractSoft materials are increasingly valued in the field of multi-fingered robotic hands due to their natural elasticity, which allows soft fingers to passively conform to external forces and adjust their bending angles without relying on complex control strategies. This inherent compliance ensures safer interactions between the robot, humans, and its surrounding environment. However, current research lacks an integrated approach that combines soft finger dynamics, control architectures, pneumatic actuation, and communication systems into a unified framework. Therefore, this thesis focuses on building a complete soft robotic hand system. A PID (Proportional-Integral-Derivative) controller is implemented, along with optimization methods, to establish a robust control structure for the soft palm. The optimization method used is Particle Swarm Optimization (PSO), which is employed to find the optimal parameters for the PID controller. In addition, the thesis presents a dynamic model of the soft robotic hand developed using deep learning method to simulate the actuator behavior. Based on the proposed finger dynamics model, two model-based control strategies are introduced: one with sensor feedback and the other without. To fully realize the hand system, the pneumatic components and communication organization are also designed and integrated. Finally, simulation experiments demonstrate the system’s performance, showing the effectiveness of different control architectures, the integration of the dynamic model, and the variations in finger bending angles under different grasp types. The results indicate that combining the deep learning-based dynamic model with the proposed control architecture enables the feedback angles to closely follow the desired trajectories, maintaining minimal error and reducing oscillation.en
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dc.description.tableofcontents誌謝 i
摘要 iii
Abstract v
Contents vii
List of Tables ix
List of Figures xi
Chapter 1 Introduction 1
1.1 Motivation and Objectives 1
1.2 Contributions 3
1.3 Organization 3
Chapter 2 Literature Review 5
2.1 Summary 5
2.2 Soft Robots 7
2.3 Modeling Methods 11
2.4 Control Methods 14
Chapter 3 Conotrol for Hand-Arm System 19
3.1 Introduction 20
3.2 Controller Structure 20
3.2.1 PID Controller 21
3.2.2 PSO Optimized PID Controller 25
3.2.3 PSO Optimized Fuzzy-PID Controller 29
3.3 Pneumatic System 36
3.4 Communication System 39
Chapter 4 Dynamic Model of Soft Robot Hand 41
4.1 Introduction 41
4.2 Basic Principles of Neural Networks and Model Design 43
4.2.1 One-Dimensional Convolutional Neural Network Model 45
4.2.2 Long Short-Term Memory Model 51
4.2.3 Bidirectional Long Short-Term Memory Model 56
4.3 Modeling Method Based on Deep Neural Network 60
4.4 Performance Evaluation 63
Chapter 5 Simulations and Experiments 67
5.1 Hardware Platform 67
5.1.1 DOFs Robotic Arm 68
5.1.2 NTU Robotic Hand VII 69
5.1.3 Sensors 75
5.2 Software Platform 80
5.3 Simulation Results 87
5.4 Experiments Results 103
Chapter 6 Conclusions and Future Works 117
6.1 Conclusions 117
6.2 Future Works 118
References 121
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dc.language.isoen-
dc.subject機械手臂手掌系統zh_TW
dc.subject軟性機械手zh_TW
dc.subject氣動網路zh_TW
dc.subject深度學習zh_TW
dc.subject比例-積分-微分控制zh_TW
dc.subject粒子群最佳化zh_TW
dc.subjectrobot Hand-Arm Systemen
dc.subjectparticle swarm optimizationen
dc.subjectPID controlen
dc.subjectdeep learningen
dc.subjectpneumatic networksen
dc.subjectsoft robt handsen
dc.title基於神經網路的軟性機器手掌動態建模與抓握控制zh_TW
dc.titleNeural Network-Based Dynamic Modeling of Soft Robotic Hands for Grasping Controlen
dc.typeThesis-
dc.date.schoolyear113-2-
dc.description.degree碩士-
dc.contributor.oralexamcommittee林峻永;劉孟昆;李廣齊zh_TW
dc.contributor.oralexamcommitteeChun-Yeon Lin;Meng-Kun Liu;Kuang-Chi Leeen
dc.subject.keyword機械手臂手掌系統,軟性機械手,氣動網路,深度學習,比例-積分-微分控制,粒子群最佳化,zh_TW
dc.subject.keywordrobot Hand-Arm System,soft robt hands,pneumatic networks,deep learning,PID control,particle swarm optimization,en
dc.relation.page126-
dc.identifier.doi10.6342/NTU202503269-
dc.rights.note同意授權(全球公開)-
dc.date.accepted2025-08-07-
dc.contributor.author-college工學院-
dc.contributor.author-dept機械工程學系-
dc.date.embargo-lift2025-08-22-
Appears in Collections:機械工程學系

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