Estimation of basic material consumption in civil engineering is very important in the initial phases of project implementation. Its\nimportance is reflected in the impact of material quantities on forming the prices of individual positions, hence on forming the\ntotal cost of construction. The construction companies use the estimate of material quantity, among other things, as a base to make\na bid on the market. The precision of the offer, taking into account the overall conditions of the business realization, directly\ninfluences the profit that the company can make on a specific project. In the early stages of project implementation, there are not\nenough available data, especially when it comes to the data needed to estimate material consumption, and therefore, the accuracy\nof material consumption estimation in the early stages of project realization is smaller. The paper presents the research on the use\nof artificial intelligence for the estimation of concrete and reinforcement consumption and the selection of optimal models for\nestimation. The estimation model was developed by using artificial neural networks. The best artificial neural network model\nshowed high accuracy in material consumption estimation expressed as the mean absolute percentage error, 8.56% for concrete\nconsumption estimate and 17.31% for reinforcement consumption estimate.
Loading....