AI Article Synopsis

  • This paper examines the training of recurrent neural networks (RNNs) using the Levenberg-Marquardt (LM) algorithm and its application in optimal control of grid-connected converters (GCCs).
  • A new algorithm called forward accumulation through time (FATT) is introduced, which helps calculate the Jacobian matrix needed for the LM algorithm, showing improved training efficiency compared to traditional methods.
  • An RNN controller with an enhanced input structure is proposed, which demonstrates performance close to ideal optimal control even in practical, real-world conditions, confirming the potential of RNNs in achieving effective optimal control solutions.

Article Abstract

This paper investigates how to train a recurrent neural network (RNN) using the Levenberg-Marquardt (LM) algorithm as well as how to implement optimal control of a grid-connected converter (GCC) using an RNN. To successfully and efficiently train an RNN using the LM algorithm, a new forward accumulation through time (FATT) algorithm is proposed to calculate the Jacobian matrix required by the LM algorithm. This paper explores how to incorporate FATT into the LM algorithm. The results show that the combination of the LM and FATT algorithms trains RNNs better than the conventional backpropagation through time algorithm. This paper presents an analytical study on the optimal control of GCCs, including theoretically ideal optimal and suboptimal controllers. To overcome the inapplicability of the optimal GCC controller under practical conditions, a new RNN controller with an improved input structure is proposed to approximate the ideal optimal controller. The performance of an ideal optimal controller and a well-trained RNN controller was compared in close to real-life power converter switching environments, demonstrating that the proposed RNN controller can achieve close to ideal optimal control performance even under low sampling rate conditions. The excellent performance of the proposed RNN controller under challenging and distorted system conditions further indicates the feasibility of using an RNN to approximate optimal control in practical applications.

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Source
http://dx.doi.org/10.1109/TNNLS.2014.2361267DOI Listing

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