Application of soft computing techniques for predicting cooling time required dropping initial temperature of mass concrete

Santosh Bhattarai, Yihong Zhou, Chunju Zhao, Huawei Zhou

Application of soft computing techniques for predicting cooling time required dropping initial temperature of mass concrete

Číslo: 2/2017
Periodikum: Civil Engineering Journal
DOI: 10.14311/CEJ.2017.02.0017

Klíčová slova: mass concrete, temperature control, cooling, placing time, artificial neural network, genetic programming, Hmotnostní beton, regulace teploty, chlazení, umísťování času, umělá neuronová síť, genetické programování

Pro získání musíte mít účet v Citace PRO.

Přečíst po přihlášení

Anotace: Minimizing the thermal cracks in mass concrete at an early age can be achieved by removing the hydration heat as quickly as possible within initial cooling period before the next lift is placed. Recognizing the time needed to remove hydration heat within initial cooling period helps to take an effective and efficient decision on temperature control plan in advance. Thermal properties of concrete, water cooling parameters and construction parameter are the most influencing factors involved in the process and the relationship between these parameters are non-linear in a pattern, complicated and not understood well. Some attempts had been made to understand and formulate the relationship taking account of thermal properties of concrete and cooling water parameters. Thus, in this study, an effort have been made to formulate the relationship for the same taking account of thermal properties of concrete, water cooling parameters and construction parameter, with the help of two soft computing techniques namely: Genetic programming (GP) software “Eureqa” and Artificial Neural Network (ANN). Relationships were developed from the data available from recently constructed high concrete double curvature arch dam. The value of R for the relationship between the predicted and real cooling time from GP and ANN model is 0.8822 and 0.9146 respectively. Relative impact on target parameter due to input parameters was evaluated through sensitivity analysis and the results reveal that, construction parameter influence the target parameter significantly. Furthermore, during the testing phase of proposed models with an independent set of data, the absolute and relative errors were significantly low, which indicates the prediction power of the employed soft computing techniques deemed satisfactory as compared to the measured data.