The objective of this paper is to improve the dynamic response and reduction in sluggishness in neural generalized predictive control (NGPC) with a modified performance index. A comparative study has been made between NGPC and a modified NGPC. The simulation results show that there is further significant improvement in the dynamic response using the modified NGPC.
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