Abstract :
This work deals with the search of parameters value for recurrent neural networks to generate a simple default limit cycle, to be used, and shaped for specific cases of oscillatory controller, instead of learning to a recurrent neural network to produce the specific oscillator behavior directly. We describe in detail, a generalized form of the "teacher forcing" gradient based algorithm, that can be used in the usual way but also as partial teacher forcing when target signals are not all available. We discuss the drawbacks of the resulting algorithm and propose a modified version in the 2 dimensions case, giving criterions toward higher order cases.
Keywords :
control system synthesis; gradient methods; learning (artificial intelligence); limit cycles; neurocontrollers; oscillations; recurrent neural nets; default limit cycle; gradient based algorithm; oscillatory control; partial teacher forcing; recurrent neural networks; simple limit cycle design; simple limit cycles; Biological information theory; Biological system modeling; Genetic algorithms; Legged locomotion; Limit-cycles; Machine learning; Neurons; Oscillators; Recurrent neural networks; Shape control;