Sensitive Load Management in Captive Power Plant—Aluminium Smelter

Author(s):  
J. K. Mohanty ◽  
M. K. Panda ◽  
M. Das ◽  
P. R. Dash ◽  
P. K. Pradhan
Author(s):  
Robert Schainker ◽  
Michael Nakhamkin ◽  
John R. Stange ◽  
Louis F. Giannuzzi

Results of engineering and optimization of 25 MW and 50 MW turbomachinery trains for compressed air energy storage (CAES) power plant application are presented. Submitted by equipment suppliers, proposals are based on the commercially available equipment. Performance data and budget prices indicate that the CAES power plant is one of the most cost effective sources of providing peaking power and load management.


Author(s):  
M. Nakhamkin ◽  
F. D. Hutchinson ◽  
J. R. Stange ◽  
R. B. Schainker ◽  
F. Canova

Results of engineering and optimization of 25 MW and 50 MW turbomachinery trains for compressed air energy storage (CAES) power plant application are presented. Proposals submitted by equipment suppliers are based on commercially available equipment. Performance data and budget prices indicate that the CAES power plant is one of the most cost effective sources of providing peaking/intermediate power and load management. The paper addresses CAES power plant integration procedure and the specifics of turbomachinery design.


2020 ◽  
Vol 10 (12) ◽  
pp. 4171
Author(s):  
Xinlin Wang ◽  
Herb S. Rhee ◽  
Sung-Hoon Ahn

To address the energy shortage problem in rural areas, significant attention has been paid to off-grid solar power plants. However, ensuring the security of these plants, improving the utilization rate of energy and, finally, proposing a sustainable energy development scheme for rural areas are still challenges. Under this, this work proposes a novel regression model-based stand-alone power plant load management system. This not only shows great potential in increasing load prediction in the real-time process but also provides effective anomaly detection for improving energy efficiency. The proposed predictor is a hybrid model that can effectively reduce the influence of fitting problems. Meanwhile, the proposed detector exhibits an efficient pattern matching process. That is, for the first time, a support vector machine (SVM) and the fruit fly optimization algorithm (FOA) are combined and applied to the field of energy consumption anomaly detection. This method was applied to manage the load of an off-grid solar power plant in a rural area in Tanzania with more than 50 households. In this paper, both the prediction and detection of our method are proven to exhibit better results than those of some previous works, and a comprehensive discussion on the establishment of a real-time energy management system has also been proposed.


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