2023
DOI: 10.1007/s00521-023-08761-0
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Estimation of coconut maturity based on fuzzy neural network and sperm whale optimization

Abstract: Coconut water is the clear liquid found inside coconuts, famous for rehydrating after exercise or while suffering from a minor sickness. The essential issue tackled in this paper is how to estimate the appropriate stage of maturity of coconut water, which is a time-consuming task in the beverage industry since, as the coconut age increases, the coconut water flavor varies. Accordingly, to handle this issue, an adaptive model based on Fuzzy Neural Network and Sperm Whale Optimization, dubbed FNN–SWO, is develop… Show more

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Cited by 2 publications
(1 citation statement)
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“…The ResNet50 architecture is more effective in detecting maturity levels than the other used CNN models. In [3], a new Fuzzy Neural Network and Sperm Whale Optimization (FNN-SWO)-based adaptive model is proposed for predicting the maturity levels of coconut water as tender, mature, and very mature by using clustering and fuzzification of the input data. In the proposed FNN-SWO model, fuzzy rules are utilized for training and testing with an adaptive network and the SWO algorithm is applied to select the optimum weights of the fuzzy rules.…”
Section: Introductionmentioning
confidence: 99%
“…The ResNet50 architecture is more effective in detecting maturity levels than the other used CNN models. In [3], a new Fuzzy Neural Network and Sperm Whale Optimization (FNN-SWO)-based adaptive model is proposed for predicting the maturity levels of coconut water as tender, mature, and very mature by using clustering and fuzzification of the input data. In the proposed FNN-SWO model, fuzzy rules are utilized for training and testing with an adaptive network and the SWO algorithm is applied to select the optimum weights of the fuzzy rules.…”
Section: Introductionmentioning
confidence: 99%