Enhanced adaptive network fuzzy inference system in checkweighing systems performance improvement

In this paper, we present the application of adaptive network based fuzzy inference system (ANFIS) to improve the measurement accuracy and the throughput rate of dynamic weighing. The overall performance of the dynamic weighing was significantly enhanced.

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