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العنوان
Maintaining stability of biped robot using optimization algorithms /
المؤلف
Khashan, Nour Salah El-Din Abd El-Motelb.
هيئة الاعداد
باحث / نور صلاح الدين عبدالمطلب خشان
مشرف / أميرة ياسين هيكل
مشرف / مصطفى عبدالخالق الحسينى
مناقش / محمود محمد بدوى
الموضوع
Systems engineering - Cost control. Systems engineering - Data processing. Heuristic algorithms. Embedded computer systems. Adaptive computing systems.
تاريخ النشر
2020.
عدد الصفحات
101 P. :
اللغة
الإنجليزية
الدرجة
ماجستير
التخصص
هندسة النظم والتحكم
تاريخ الإجازة
1/1/2020
مكان الإجازة
جامعة المنصورة - كلية الهندسة - قسم هندسة الحاسبات والنظم
الفهرس
Only 14 pages are availabe for public view

from 101

from 101

Abstract

The easy gait stability of biped robot is an important issue and has been mentioned in different works in literature. To evaluate the walking stability, we performed the Zero Moment Point (ZMP) analysis for the obtained trajectory model. Whale Optimization Algorithm (WOA) has been gained more interest, due to the fewer number of control parameters, and easy implementation of the code. However, WOA has low convergence speed and accuracy. In this thesis, a new variant of WOA which focuses on balancing between exploration and exploitation is proposed. The proposed A-C parametric WOA named as the A-C parametric WOA targets the A and C parameters of the standard WOA specifically through variation of ”a” parameter non-linearly and randomly, as well as updating parameter ”C” by applying inertia weight strategy. To verify the performance of the proposed A-C parametric WOA, we at first test it against the standard WOA using forty-one benchmark functions from CEC’2005 and CEC’2017. The results show a success rate of 38 out of 41 functions, while the T-test and Wilcoxon analyses succeeded in 33 and 37 out of 41 respectively. Secondly, a comparative study has been held between the A-C parametric WOA and the most well-known state-of-art soft computing techniques (PSO, DE, CS, GWO, WOA, and AGWO) through the standard deviation (STD) and the average resulting in a success rate of 6 out of 8 common benchmark functions. Thirdly, the parametric A-C WOA is applied on a biped robot to find the optimal settings of the hip parameters that make ZMP stays in the middle of the support polygon as much as possible. A comparative study has been held between the proposed A-C parametric WOA and various well-known algorithms (PSO, DE, GA, WOA, and SSA) resulting in the best convergence characteristic with a reduction in STD of 47.9 % compared to the standard WOA. Results show that the proposed A-C parametric WOA has the best results with the lowest STD and minimum error.