Optimized Artificial Neural Network Model and Compensator in Model Predictive Control for Anomaly Mitigation

Author:

Hong Seong Hyeon1,Cornelius Jackson2,Wang Yi3,Pant Kapil2

Affiliation:

1. Department of Mechanical Engineering, University of South Carolina, 541 Main St., Columbia, SC 29201

2. CFD Research Corporation, 6820 Moquin Dr. NW, Huntsville, AL 35806

3. Department of Mechanical Engineering, University of South Carolina, 300 Main St., Columbia, SC 29201

Abstract

Abstract This paper presents a new artificial neural network (ANN)-based system model that concatenates an optimized artificial neural network (OANN) and a neural network compensator (NNC) in series to capture temporally varying system dynamics caused by slow-paced degradation/anomaly. The OANN comprises a complex, fully connected multilayer perceptron, trained offline using nominal, anomaly free data, and remains unchanged during online operation. Its hyperparameters are selected using genetic algorithm-based meta-optimization. The compact NNC is updated continuously online using collected sensor data to capture the variations in system dynamics, rectify the OANN prediction, and eventually minimize the discrepancy between the OANN-predicted and actual response. The combined OANN–NNC model then reconfigures the model predictive control (MPC) online to alleviate disturbances. Through numerical simulation using an unmanned quadrotor as an example, the proposed model demonstrates salient capabilities to mitigate anomalies introduced to the system while maintaining control performance. We compare the OANN–NNC with other online modeling techniques (adaptive ANN and multinetwork model), showing it outperforms them in reference tracking of altitude control by at least 0.5 m and yaw control by 1 deg. Moreover, its robustness is confirmed by the MPC consistency regardless of anomaly presence, eliminating the need for additional model management during online operation.

Funder

Army Research Laboratory

Publisher

ASME International

Subject

Computer Science Applications,Mechanical Engineering,Instrumentation,Information Systems,Control and Systems Engineering

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