An Introduction to Neural Networks and Their Application in the Sugar Industry

نویسنده

  • SD PEACOCK
چکیده

Neural networks were inspired by biological nervous systems, and are composed of many simple computational elements operating in parallel. In this study, the basic concepts of neural networks are introduced, and the workings of these systems are explained. Many process systems are not amenable to mathematical modelling, as they may be too complex to be understood or represented in simple terms. The application of neural networks to these kinds of difficult problems is described, and the neural network modelling of the boiling point elevation of aqueous sucrose solutions is discussed. The use of neural networks for process control is outlined, with particular reference to the possible application of neural network image analysis to the control of continuous pan boiling. and photograph recognition. Most importantly, it is possible to perform all of these applications without the need for specialised software.

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تاریخ انتشار 2007