@article{MAKHILLIJSC20138521162, title = {Parameter Based Kalman Filter Training in Neural Network}, journal = {International Journal of Soft Computing}, volume = {8}, number = {5}, pages = {352-355}, year = {2013}, issn = {1816-9503}, doi = {ijscomp.2013.352.355}, url = {https://makhillpublications.co/view-article.php?issn=1816-9503&doi=ijscomp.2013.352.355}, author = {P. and}, keywords = {KF-kalman filtering,neural networks,NNs,brain,fault}, abstract = {Neural Networks (NNs) have been employed in many applications in recent years. A neural network is an interconnection of a number of artificial neurons that simulate a biological brain system. It has the ability to approximate nonlinear functions and can achieve higher degree of fault tolerance. NNs have been successfully introduced into power electronics circuits where a NN replaced a large and memory demanding look-up table to generate the switching angles. The neural network controllers for engine idle speed and Air/Fuel (A/F) ratio control produce signals that affect the operation of the engine while the neural network models are used to describe various aspects of engine operation as a function of measurable engine outputs. This study aims to study the behavior of the parameter based kalman filtering in neural network.} }