intelligent energy management system
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CT: Intelligent energy management system – techniques and methods.
Our environment is an asset to be managed carefully and is not an expendable resource to be taken for granted. The main original contribution of this thesis is in formulating intelligent techniques and simulating case studies to demonstrate the significance of the present approach for achieving a low carbon economy. Energy boosts crop production, drives industry and increases employment. Wise energy use is the first step to ensuring sustainable energy for present and future generations. Energy services are essential for meeting internationally agreed development goals. Energy management system lies at the heart of all infrastructures from communications, economy, and society’s transportation to the society. This has made the system more complex and more interdependent. The increasing number of disturbances occurring in the system has raised the priority of energy management system infrastructure which has been improved with the aid of technology and investment; suitable methods have been presented to optimize the system in this thesis.
Since the current system is facing various problems from increasing disturbances, the system is operating on the limit, aging equipments, load change etc, therefore an improvement is essential to minimize these problems. To enhance the current system and resolve the issues that it is facing, smart grid has been proposed as a solution to resolve power problems and to prevent future failures. This thesis argues that smart grid consists of computational intelligence and smart meters to improve the reliability, stability and security of power. In comparison with the current system, it is more intelligent, reliable, stable and secure, and will reduce the number of blackouts and other failures that occur on the power grid system. Also, the thesis has reported that smart metering is technically feasible to improve energy efficiency.
In the thesis, a new technique using wavelet transforms, floating point genetic algorithm and artificial neural network based hybrid model for gaining accurate prediction of short-term load forecast has been developed. Adopting the new model is more accuracy than radial basis function network. Actual data has been used to test the proposed new method and it has been demonstrated that this integrated intelligent technique is very effective for the load forecast.
Choosing the appropriate algorithm is important to implement the optimization during the daily task in the power system. The potential for application of swarm intelligence to Optimal Reactive Power Dispatch (ORPD) has been shown in this thesis. After making the comparison of the results derived from swarm intelligence, improved genetic algorithm and a conventional gradient-based optimization method, it was concluded that swam intelligence is better in terms of performance and precision in solving optimal reactive power dispatch problems.

S: http://openaccess.city.ac.uk/1212/ (last access: 28 December 2014)

N: As energy costs and demands rise and more renewable energy sources come available, the existing energy infrastructure struggles to keep pace. The aging electricity grid does not efficiently balance supply and demand, resulting in needless waste, expense, threats of blackouts and brownouts, and carbon dioxide emissions.
While the development of a real-time, proactive, and intelligent grid (or smart grid as it is widely known) promises to solve energy problems in the long term, consumers and businesses need effective and affordable solutions today for managing their energy consumption
and costs.
Intelligent energy management technologies can provide these immediate solutions. Properly implemented, intelligent energy management cannot only help cut energy use, spending, and emissions, but also provide a solid foundation to build tomorrow’s smarter energy infrastructure.

S: http://www.comverge.com/Comverge/media/pdf/Whitepaper/Whitepaper_IntelligentEnergyManagement.pdf (last access: 28 December 2014)

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CR: computer science, energy, intelligent system.