Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization
碩士 === 國立臺灣科技大學 === 電機工程系 === 99 === Immune system is living body’s self-protection system. It takes the necessary defense and response measures by identifying invasive bodies from non-self substances, and by drawing from the past memories along with the regeneration of antibody. This adaptive-memor...
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ndltd-TW-099NTUS54420442019-05-15T20:42:05Z http://ndltd.ncl.edu.tw/handle/9jyh62 Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization 加強預測型免疫演算法之機器人路徑規劃與系統應用 Kuan-ting Chou 周冠廷 碩士 國立臺灣科技大學 電機工程系 99 Immune system is living body’s self-protection system. It takes the necessary defense and response measures by identifying invasive bodies from non-self substances, and by drawing from the past memories along with the regeneration of antibody. This adaptive-memory feature enables the emulation of immune system be applied to the optimal behavior decision making in dynamically changing environment, especially in the mobile robots path planning. This thesis develops an prediction enhanced rule for Ishiguro’s artificial immune algorithm by incorporating an estimation of the target position, and responds accordingly in the aforementioned technique. Computer simulation via MATLAB programming has proved the feasibility of this new approach. Hardware implementation, via Microchip Chip equipped mobile robot, further confirms that this new technique can be effectively applied in mobile robot obstacle avoidance and tracking tasks. Chih-Ming Chen 陳志明 2011 學位論文 ; thesis 67 zh-TW |
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碩士 === 國立臺灣科技大學 === 電機工程系 === 99 === Immune system is living body’s self-protection system. It takes the necessary
defense and response measures by identifying invasive bodies from non-self substances,
and by drawing from the past memories along with the regeneration of antibody. This
adaptive-memory feature enables the emulation of immune system be applied to the
optimal behavior decision making in dynamically changing environment, especially in the
mobile robots path planning. This thesis develops an prediction enhanced rule for
Ishiguro’s artificial immune algorithm by incorporating an estimation of the target position,
and responds accordingly in the aforementioned technique.
Computer simulation via MATLAB programming has proved the feasibility of this
new approach. Hardware implementation, via Microchip Chip equipped mobile robot,
further confirms that this new technique can be effectively applied in mobile robot obstacle
avoidance and tracking tasks.
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Chih-Ming Chen |
author_facet |
Chih-Ming Chen Kuan-ting Chou 周冠廷 |
author |
Kuan-ting Chou 周冠廷 |
spellingShingle |
Kuan-ting Chou 周冠廷 Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization |
author_sort |
Kuan-ting Chou |
title |
Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization |
title_short |
Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization |
title_full |
Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization |
title_fullStr |
Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization |
title_full_unstemmed |
Prediction Enhanced Immune Algorithm for Robot Path Plan and System Realization |
title_sort |
prediction enhanced immune algorithm for robot path plan and system realization |
publishDate |
2011 |
url |
http://ndltd.ncl.edu.tw/handle/9jyh62 |
work_keys_str_mv |
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1719102189691994112 |