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    <title>DSpace Collection:</title>
    <link>http://210.212.227.212:8080/xmlui/handle/123456789/362</link>
    <description />
    <pubDate>Wed, 27 May 2026 20:52:42 GMT</pubDate>
    <dc:date>2026-05-27T20:52:42Z</dc:date>
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      <title>DSpace Collection:</title>
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      <link>http://210.212.227.212:8080/xmlui/handle/123456789/362</link>
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    <item>
      <title>CHARGE SCHEDULING OF PLUG-IN ELECTRIC  VEHICLES IN DC NANOGRID</title>
      <link>http://210.212.227.212:8080/xmlui/handle/123456789/376</link>
      <description>Title: CHARGE SCHEDULING OF PLUG-IN ELECTRIC  VEHICLES IN DC NANOGRID
Authors: Vaishnavi, Vijayan; Dr. Mohammed, Mansoor O
Abstract: The rapid increase in environmental issues lead to the development of Plug-In Electric Vehicle &#xD;
(PEV). PEVs are environmentally friendly and have a lower operating cost. However, the large scale deployment of PEVs can cause several detrimental effects on power distribution systems. To &#xD;
address these issues, scheduled charging schemes for PEVs are formulated. Charging of PEVs&#xD;
using renewable energy sources can reduce the demand on the grid. However, renewable energy &#xD;
sources are intermittent and require grid connection for reliable power supply. The development &#xD;
of smart grids and technologies lead to the evolution of nanogrids, which overcome the innate &#xD;
flaws of conventional power distribution systems. DC nanogrids provide suitable provisions for &#xD;
the incorporation of sustainable energy sources and PEV charging stations. In this paper, an &#xD;
optimal PEV charge scheduling algorithm is presented for charging PEV in a DC nanogrid with &#xD;
solar photovoltaic (PV) system. The charge scheduling algorithm is based on the Time of Use &#xD;
Price (ToUP) tariff scheme. The algorithm schedules the charging of PEVs in slots with minimum &#xD;
cost and interrupts the charging during peak hours. The main aim of the charge scheduling &#xD;
algorithm is to minimize the charging cost of PEVs. The charging of different PEVs using the &#xD;
scheduling algorithm under different cases were carried out to analyze the reliability and efficacy &#xD;
of the scheduling algorithm. The algorithm is developed using MATLAB</description>
      <pubDate>Thu, 30 Jun 2022 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">http://210.212.227.212:8080/xmlui/handle/123456789/376</guid>
      <dc:date>2022-06-30T00:00:00Z</dc:date>
    </item>
    <item>
      <title>SOLAR RADIATION FORECASTING USING MACHINE LEARNING TECHNIQUES</title>
      <link>http://210.212.227.212:8080/xmlui/handle/123456789/375</link>
      <description>Title: SOLAR RADIATION FORECASTING USING MACHINE LEARNING TECHNIQUES
Authors: Sarath, Sasidharan; Baiju R, Naina
Abstract: A well-known statistical modelling method named ARIMA has been used to forecast the total daily solar&#xD;
radiation generated by a solar panel located in a research facility. The beauty of the ARIMA model lies in its&#xD;
simplicity and it can only be applied to stationary time series. So, our time series data, which is seasonal and&#xD;
non-stationary, is transformed into a stationary one for applying the ARIMA model. The model is developed&#xD;
using sophisticated statistical techniques. The optimum model is chosen and validated using Akaike&#xD;
information criterion (AIC) and residual sum of squares (SSE). Another method used for solar radiation&#xD;
prediction is LSTM. Long short-term memory (LSTM) models based on specialized deep neural network based architecture have emerged as an important model for forecasting time-series. existing models are not&#xD;
good at learning long-term historical dependencies, lead to compromise in modeling non- linear solar&#xD;
irradiance patterns. In this paper, a novel prediction model Long Short Term Memory (LSTM) from deep&#xD;
neural network family is used to predict hourly solar irradiance with enhanced prediction accuracy by&#xD;
considering long-term historical data dependencies. The proposed model is compared with Random forest and&#xD;
Extreme Gradient Boost (XGBoost).</description>
      <pubDate>Thu, 30 Jun 2022 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">http://210.212.227.212:8080/xmlui/handle/123456789/375</guid>
      <dc:date>2022-06-30T00:00:00Z</dc:date>
    </item>
    <item>
      <title>SMART GRID STABILITY PREDICTION AND EVALUATION USING  MODERN MACHINE LEARNING ALGORITHMS</title>
      <link>http://210.212.227.212:8080/xmlui/handle/123456789/374</link>
      <description>Title: SMART GRID STABILITY PREDICTION AND EVALUATION USING  MODERN MACHINE LEARNING ALGORITHMS
Authors: Safna, S
Abstract: The global demand for energy is rapidly rising. As a result, energy systems must evolve and be &#xD;
upgraded in order to become more efficient, adaptable, and sustainable. A smart grid reduces &#xD;
workforce while providing consumers with safe, reliable, high-quality, and long-lasting &#xD;
electricity. Smart grids use digital communication technology to enable two-way flow of &#xD;
electricity and data. This vast amount of data needs to be processed for making better decisions &#xD;
for maintaining the grid stability. ML and AI approaches are utilised to acquire, store, and &#xD;
manage this data. This study compares the performance of modern machine learning methods for &#xD;
predicting smart grid stability. The dataset that was chosen contains findings from a smart grid &#xD;
simulation. XGBoost, Adaboost, Gradient Boosting Method (GBM), HistGBM, LightGBM and &#xD;
CatBoost algorithms have been implemented to forecast smart grid stability. Performance of the &#xD;
ML model has been evaluated based on Classification evaluation metrics. The following &#xD;
evaluation metrics such as accuracy, precision, recall, F1-score, MCC, specificity, training time, &#xD;
predicting time, AUC-ROC curve and AUC-PR CURVE are used for classification &#xD;
evaluation.An efficient Stacking Ensemble Classifier (SEC) model developed by using the above &#xD;
mentioned machine learning algorithms and compared the evaluated results of individual &#xD;
machine learning models with the SEC model.</description>
      <pubDate>Thu, 30 Jun 2022 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">http://210.212.227.212:8080/xmlui/handle/123456789/374</guid>
      <dc:date>2022-06-30T00:00:00Z</dc:date>
    </item>
    <item>
      <title>MULTI-CLASS CLASSIFICATION OF TRANSFORMER FAULT FROM DISSOLVED GAS ANALYSIS</title>
      <link>http://210.212.227.212:8080/xmlui/handle/123456789/373</link>
      <description>Title: MULTI-CLASS CLASSIFICATION OF TRANSFORMER FAULT FROM DISSOLVED GAS ANALYSIS
Authors: Nowfiya, B S; Dr. Sabeena, Beevi K
Abstract: Power transformers are a critical part of the power system. The early-stage fault detection&#xD;
of Power transformer is essential for the protection and prevention of further technical&#xD;
and financial losses. Dissolved Gas Analysis (DGA) is a commonly used diagnosis tool for&#xD;
keeping track of transformer status,but the existing DGA methods are based on expertise&#xD;
and personal experience,so their reliability can never be guaranteed,which can lead to&#xD;
unreliable diagnosis.Nowadays,artificial intelligence-based techniques are widely used to&#xD;
enhance DGA fault detection accuracy.Here,the machine learning model tries to overcome&#xD;
the deficiency of conventional DGA by converting DGA into a pattern recognition problem&#xD;
by establishing a connection between gas concentration and incipient faults. In this thesis,&#xD;
a new deep learning based Bidirectional Long short-term Memory(BLSTM) is introduced&#xD;
for multi-class classification of transformer fault and the model’s performance is compared&#xD;
with that of other deep learning models.</description>
      <pubDate>Thu, 30 Jun 2022 00:00:00 GMT</pubDate>
      <guid isPermaLink="false">http://210.212.227.212:8080/xmlui/handle/123456789/373</guid>
      <dc:date>2022-06-30T00:00:00Z</dc:date>
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