This paper presents tailor-made neural model structures and two custom fitting criteria for learning dynamical systems. The proposed framework is based on a representation of the system behavior in terms of continuous-time state-space models. The sequence of hidden states is optimized along with the neural network parameters in order to minimize the difference between measured and estimated outputs, and at the same time to guarantee that the optimized state sequence is consistent with the estimated system dynamics. The effectiveness of the approach is demonstrated through three case studies, including two public system identification benchmarks based on experimental data.
翻译:本文介绍了为学习动态系统量身定制的神经模型结构和两个自定义的适应标准。拟议框架的基础是以连续时间状态空间模型来代表系统行为。隐藏状态的顺序与神经网络参数一起优化,以尽量减少计量和估计产出之间的差异,同时保证优化状态序列与估计的系统动态相一致。该方法的有效性通过三个案例研究,包括两个基于实验数据的公共系统识别基准,得到证明。