2023
DOI: 10.3390/w15061126
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A Non-Hybrid Data-Driven Fuzzy Inference System for Coagulant Dosage in Drinking Water Treatment Plant: Machine-Learning for Accurate Real-Time Prediction

Abstract: Coagulation is the most sensitive step in drinking water treatment. Underdosing may not yield the required water quality, whereas overdosing may result in higher costs and excess sludge. Traditionally, the coagulant dosage is set based on bath experiments performed manually, known as jar tests. Therefore, this test does not allow real-time dosing control, and its accuracy is subject to operator experience. Alternatively, solutions based on machine learning (ML) have been evaluated as computer-aided alternative… Show more

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Cited by 10 publications
(3 citation statements)
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“…Succession is a gradual and dynamic process in which plant communities undergo various changes over time. Bressane et al [44] aimed to assess and compare the performance of various ML methods for the computer-aided classification of successional stages in the subtropical Atlantic Forest. The study compared the performance of different ML methods, including FIS, ANN, classifier committees, and SVM.…”
Section: Studies Environmental Parameters ML Methodsmentioning
confidence: 99%
“…Succession is a gradual and dynamic process in which plant communities undergo various changes over time. Bressane et al [44] aimed to assess and compare the performance of various ML methods for the computer-aided classification of successional stages in the subtropical Atlantic Forest. The study compared the performance of different ML methods, including FIS, ANN, classifier committees, and SVM.…”
Section: Studies Environmental Parameters ML Methodsmentioning
confidence: 99%
“…Fuzzy logic allows for the representation and processing of these uncertainties by employing linguistic variables, membership functions, and fuzzy rules [44][45][46][47][48]. It enables a more nuanced approach to decision-making, accommodating imprecise data and providing a degree of flexibility that traditional binary logic may not offer [49][50][51][52][53]. This is crucial in situations where the suitability of landfill sites is influenced by complex, interrelated factors, and where precise, deterministic models may fall short in capturing the full spectrum of uncertainty and variability present in the data.…”
Section: Distance From Gas and Oil Pipelinesmentioning
confidence: 99%
“…By using WEKA software to set the number of rules and related linear equations, the model has a good prediction ability for the peak value of WQI in raw water. Bressane et al [16] proposed a fuzzy inference system (D2FIS) based on unmixed data to predict the coagulant dosage of WTP in real time, which can effectively reduce the operation and maintenance cost of WTP. The experimental results show that the proposed model is better than ANFIS, cascade correlation network and support vector machine.…”
mentioning
confidence: 99%