Prediction model for compressive strength of rice husk ash blended sandcrete blocks using a machine learning models
Navaratnarajah Sathiparan
Abstract:Sandcrete blocks are popular for construction but their production relies on cement, a major greenhouse gas contributor. Rice husk ash (RHA), a waste product, can partially replace cement in sandcrete blocks. This study uses machine learning (ML) to predict the compressive strength of these blocks, influenced by factors like the ratio of fine aggregate to binder, RHA to binder ratio, water-to-binder ratio, and curing time. The data was collected from published literature on factors affecting compressive streng… Show more
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