12 research outputs found

    Application of Machine Learning Techniques in Aquaculture

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    ABSTRACT: In this paper we present applications of different machine learning algorithms in aquaculture. Machine learning algorithms learn models from historical data. In aquaculture historical data are obtained from farm practices, yields, and environmental data sources. Associations between these different variables can be obtained by applying machine learning algorithms to historical data. In this paper we present applications of different machine learning algorithms in aquaculture applications

    Power loss investigation in wind generated electricity through HVAC transmission system

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    "... the research presented in this thesis identifies the key sources of power loss while connecting wind farms to the existing grid through HVAC transmission system. The findings will ultimately assist in establishing wind power as a key source of renewable energy and help developing a green Australia"--Abstract

    Analysis of power losses in wind generated electricity through simulation

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    Autoencoder for wind power prediction

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    Abstract Successful integration of renewable energy sources like wind power into smart grids largely depends on accurate prediction of power from these intermittent sources. Production of wind power cannot be controlled as the wind speed can vary based on weather conditions. Accurate prediction of wind power can assist smart grid that intelligently decides on the usage of alternative power sources based on demand forecast. Time series wind speed data are normally used for wind power prediction. In this paper, we have investigated the usage of a set of secondary features obtained using deep learning for wind power prediction. Deep learning is a special form on neural network that is capable of capturing the structural properties of time series data in terms of a set of numeric features. More precisely, we have designed a two-stage autoencoder (a particular type of deep learning) and incorporated the structural features into a prediction framework. Using the structural features, we have achieved as high as 12.63% better prediction accuracy than traditionally used statistical features
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