Coal, as an initial source of energy, requires a detailed investigation in terms of ultimate analysis, proximate analysis, and its biological constituents (macerals). The rank and calorific value of each type of coal are managed by the mentioned properties. In contrast to ultimate and proximate analyses, determining the macerals in coal requires sophisticated microscopic instrumentation and expertise. This study emphasizes the estimation of the concentration of macerals of Indian coals based on a hybrid imperialism competitive algorithm (ICA)–artificial neural network (ANN). Here, ICA is utilized to adjust the weight and bias of ANNs for enhancing their performance capacity. For comparison purposes, a pre-developed ANN model is also propose...
The petrographic composition of coal has a significant impact on its technological and sorption prop...
Different types of learning algorithms of artificial neural network (ANN) models for prediction of g...
In this study, five different machine learning (ML) and artificial intelligence (AI) models: random ...
Coal, as an initial source of energy, requires a detailed investigation in terms of ultimate analysi...
The gross calorific value (GCV) is an important property defining the energy content and thereby eff...
Coal as a fossil and non-renewable fuel is one of the most valuable energy minerals in the world wit...
The experimental determination of calorific value of solid fuels is a cost intensive process, as it ...
The calorific value of coal varies depending on type of coal and foreign matter content. The calorif...
When analyzing the sorption properties of coal in the context of gas hazards in underground mining, ...
Proximate analysis of coal is of great significance to ensure the safe and economic operation of coa...
26th International Mineral Processing Congress, IMPC (2012 : New Delhi; India)Gross calorific value ...
379-386The main task of coal producers is to provide for sufficient quantities of coal of required ...
In the fossil fuel (coal) based power plants, for estimating the combustion air requirement and for ...
Chemical composition of Slovenian coal has been characterised in terms of proximate and ultimate ana...
India, the world’s third largest coal producing country, is expected to maintain strong dependency o...
The petrographic composition of coal has a significant impact on its technological and sorption prop...
Different types of learning algorithms of artificial neural network (ANN) models for prediction of g...
In this study, five different machine learning (ML) and artificial intelligence (AI) models: random ...
Coal, as an initial source of energy, requires a detailed investigation in terms of ultimate analysi...
The gross calorific value (GCV) is an important property defining the energy content and thereby eff...
Coal as a fossil and non-renewable fuel is one of the most valuable energy minerals in the world wit...
The experimental determination of calorific value of solid fuels is a cost intensive process, as it ...
The calorific value of coal varies depending on type of coal and foreign matter content. The calorif...
When analyzing the sorption properties of coal in the context of gas hazards in underground mining, ...
Proximate analysis of coal is of great significance to ensure the safe and economic operation of coa...
26th International Mineral Processing Congress, IMPC (2012 : New Delhi; India)Gross calorific value ...
379-386The main task of coal producers is to provide for sufficient quantities of coal of required ...
In the fossil fuel (coal) based power plants, for estimating the combustion air requirement and for ...
Chemical composition of Slovenian coal has been characterised in terms of proximate and ultimate ana...
India, the world’s third largest coal producing country, is expected to maintain strong dependency o...
The petrographic composition of coal has a significant impact on its technological and sorption prop...
Different types of learning algorithms of artificial neural network (ANN) models for prediction of g...
In this study, five different machine learning (ML) and artificial intelligence (AI) models: random ...