An Adaptive Gradient Training Approach for a Neural- Network Controller: A Civil Engineering Application
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چکیده
• “An Efficient Training Technique for a Neural-Network Controller for Seismically Excited Structures,” (reference [54]) by Liut et al. • “An overview of Some Non-Traditional Neural-Network Training Strategies for Seismic Response Suppression of Building Structures,” (reference [56]) by Liut et al. • “A Modified Gradient-Search Training Technique for Neural-Network Structural Control,” (reference [59]) by Liut et al. • “Seismic Response Mitigation for Hysteretic Building Structures Using a Neural-Network Controller,” (reference [64]), by Matheu et al.
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