2023
DOI: 10.3390/app13169135
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A Hybrid Prediction Model for Local Resistance Coefficient of Water Transmission Tunnel Maintenance Ventilation Based on Machine Learning

Abstract: Multiple ducts in the working shaft and main body of tunnels form a combined tee structure. An efficient and accurate prediction method for the local resistance coefficient is the key to the design and optimization of the maintenance ventilation scheme. However, most existing studies use numerical simulations and model experiments to analyze the local resistance characteristics of specific structures and calculate the local resistance coefficient under specific ventilation conditions. Therefore, there are shor… Show more

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“…A study employed an improved genetic algorithm (GA) to solve the inverse problem of ventilation resistance coefficients, enhancing the algorithm's global and local search capabilities [62]. In a different line of research, a hybrid prediction model for the local resistance coefficient of water transmission tunnel maintenance ventilation has been proposed based on machine learning [63]. The hybrid model introduced the hybrid kernel into a relevance vector machine to build the Hybrid Kernel Relevance Vector Machine model (HKRVM).…”
Section: Related Workmentioning
confidence: 99%
“…A study employed an improved genetic algorithm (GA) to solve the inverse problem of ventilation resistance coefficients, enhancing the algorithm's global and local search capabilities [62]. In a different line of research, a hybrid prediction model for the local resistance coefficient of water transmission tunnel maintenance ventilation has been proposed based on machine learning [63]. The hybrid model introduced the hybrid kernel into a relevance vector machine to build the Hybrid Kernel Relevance Vector Machine model (HKRVM).…”
Section: Related Workmentioning
confidence: 99%