Wind energy is classified as one of the renewable source of energy present in abundance. The process of transforming kinetic energy into electrical energy is known as harnessing wind energy. Wind turbine automation is the procedure of setting up an intelligent system using computer that controls the functioning of turbines and observing the failures, improving the performance of wind turbine by controlling the motion of turbine and magnifying the conversion of energy. The wind turbine automation can be totally integrated or can be applied in any particular component of the wind turbine, including interior of the nacelle. There is a rising demand for automated wind turbines to safeguard the overall infrastructure of wind turbine and gain optimum output. By achieving wind turbine automation, the effectiveness to harvest wind energy will increase and reliance on conventional non-renewable and exhaustible sources such as coal, oil etc.
The advantage of wind turbine automation are reliability, efficiency of wind turbines, safety, higher rate of conversion of energy, magnified permanence of components of wind turbine, economy scale and decreased failure of accidents during installation and maintenance. Although, the investment in the initial period and replacement cost of conventional setup is accompanied with the automation of wind turbine is costly. The mechanical advancements in the initial phase requires more time to develop.
The global wind turbine automation market is expected to witness a double digit CAGR over the foreseeable years (2015-2023) because of rise in consumption of wind energy as a renewable resource. The major driving factors affecting the rise in global wind turbine automation market are – decrease in natural resources, growing attempts by governments for harvesting wind energy, increase in global warming and world- wide efforts for regulating emission of poisonous gases like carbon dioxide in atmosphere. The rise of other renewable sources like solar cells give a direct competition to wind energy. The major restrictive factors that affects the growth in wind turbine automation market is increased requirement for automation by various clients demanding the different mechanisms in the wind turbine automation market.
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The global wind turbine automation market is bifurcated based on type of automation used, type of wind farms and region. On the basis of type of wind farm, the global wind turbine automation market is segmented into offshore and onshore. Based on type of automation used, the global wind turbine automation market can be classified into PLC, SCADA, CMS and HMI. Geographically, the global wind turbine automation market can be categorized into North America, Europe, Asia-Pacific, Latin America, and Middle East & Africa.
Current progress contains various advancements to observe and keep tracks of regularity of motion of turbines and conversion of energy to analyze data and predict future developments.Bachmann electronic Inc., GmbH, Siemens AG, ABB, and Rockwell Automation are some of the major companies of the global wind turbine automation market. The US and Germany market is more developed in terms of adopting the technology. Contrary, the South Asian market is expected to show tremendous growth in future. The rapid development in wind power market will observe consequent growth in the global wind turbine automation market. Government is massively investing in the wind energy related projects to fulfill the rapid demand for electricity.
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The energy conversion rate and productivity will be increased with the wind turbine automation. The emerging markets for wind turbine automation in future are India, China and Korea. The report gives a cumulative assessment of the world-wide wind turbine automation market and contains important facts, insights, and previous data and demographically supported and market data validated by the industry and forecasts with substantial assumptions and methods. It gives an information and analysis by categories such as type of automation system used, geography and type of wind farms.