Control and monitoring system optimalization of combustion in furnace boiler prototype at industrial steam power plant with comparison of Neural Network (NN) and Extreme Learning Machine (ELM) method

This paper is presenting a design and research studies in industrial steam power plant system called “control and monitoring system to optimize the combustion process in the furnace boiler prototype with comparison of neural network and extreme learning machine”. Comparison between Neural Network and ELM (Extreme Learning Machine) methods will be used to this combustion control system and will be implemented in a prototype with microcontroller. This prototype is using the value of temperature sensor and value of smoke sensor in the furnace as parameter of heat to control the flow of air and fuel oil. The temperature sensor in this research is type K Thermocouple. The smoke sensor is MQ sensor. This prototype also used fan and pump oil as an actuator. Fans are used to supply the oxygen and pump is used to supply the fuel oil. From the experimental result, this prototype shows the optimization of combustion system using ELM (Extreme Learning Machine) method can work well compared with NN (Neural Network) method. ELM Control System has a very good response and it can work well (RMSE = 6,32456E-05). So, if the system is applied in the industrial steam power plant, it can improve the performance of combustion control systems and able to save the fuel.

[1]  C. L. Liu,et al.  Robust microgrid power flow using particle swarm optimization , 2013, International School on Nonsinusoidal Currents and Compensation 2013 (ISNCC 2013).

[2]  Adi Soeprijanto Neural Network Optimal Power Flow(NN-OPF) based on IPSO with Developed Load Cluster Method , 2010 .

[3]  Kuo Lung Lian,et al.  A distribution power flow using particle swarm optimization , 2012, 2012 IEEE Power and Energy Society General Meeting.

[4]  Adi Soeprijanto,et al.  Digital Generator Capability Curve for Improving Optimal Power Flow based on IPSO , 2013 .

[5]  Adi Soeprijanto,et al.  Neural network implementation for invers kinematic model of arm drawing robot , 2016, 2016 International Symposium on Electronics and Smart Devices (ISESD).

[6]  Adi Soeprijanto,et al.  Real-time unbalanced load flow development using direct-ZBR method and modified lambda iteration for on-line monitoring and control , 2013 .

[7]  Adi Soeprijanto,et al.  Smart-Meter based on current transient signal signature and constructive backpropagation method , 2014, 2014 The 1st International Conference on Information Technology, Computer, and Electrical Engineering.

[8]  Adi Soeprijanto,et al.  Rotor bars fault detection by DFT spectral analysis and Extreme Learning Machine , 2016, 2016 International Symposium on Electronics and Smart Devices (ISESD).

[9]  Adi Soeprijanto,et al.  Comparison methods of Fuzzy Logic Control and Feed Forward Neural Network in automatic operating temperature and humidity control system (Oyster Mushroom Farm House) using microcontroller , 2016, 2016 International Symposium on Electronics and Smart Devices (ISESD).

[10]  Kuo Lung Lian,et al.  Improved Robustness of Sequential Three Phase Power Flow Using Homotopic Method , 2013 .

[11]  Kuo Lung Lian,et al.  Microgrid power flow using Homotopic and Runge-Kutta Method , 2015, 2015 IEEE 2nd International Future Energy Electronics Conference (IFEEC).

[12]  Tsai-Hsiang Chen,et al.  A distribution power flow using particle swarm optimization , 2012, PES 2012.

[13]  Adi Soeprijanto,et al.  Incremental Particle Swarm Optimizer with local search for Optimal Power Flow Subjected to Digital GCC based on Neural Network , 2012 .

[14]  Adi Soeprijanto,et al.  Optimal Placement and Sizing of Distributed Generation for Minimize Losses in Unbalance Radial Distribution Systems Using Quantum Genetic Algorithm , 2014 .