Mirza Muntasir Nishat’s research while affiliated with Islamic University of Technology and other places

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Publications (4)


Statistical features of the solar irradiance data.
Meteorological parameters.
Pearson's correlation coefficients between meteorological parameters and GHI Weather Variables Dhaka Cox's Bazar
Selected parameters for Encoder-Decoder & Attention-Based GRU and LSTM model
Selected parameters for the Transformer and Temporal Fusion Transformer (TFT) model

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Attention-Based Models for Multivariate Time Series Forecasting: Multi-step Solar Irradiation Prediction
  • Article
  • Full-text available

March 2024

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311 Reads

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12 Citations

Heliyon

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Mirza M. Nishat

Bangladesh's subtropical climate with an abundance of sunlight throughout the greater portion of the year results in increased effectiveness of solar panels. Solar irradiance forecasting is an essential aspect of grid-connected photovoltaic systems to efficiently manage solar power's variation and uncertainty and to assist in balancing power supply and demand. This is why it is essential to forecast solar irradiation accurately. Many meteorological factors influence solar irradiation, which has a high degree of fluctuation and uncertainty. Predicting solar irradiance multiple steps ahead makes it difficult for forecasting models to capture long-term sequential relationships. Attention-based models are widely used in the field of Natural Language Processing for their ability to learn long-term dependencies within sequential data. In this paper, our aim is to present an attention-based model framework for multivariate time series forecasting. Using data from two different locations in Bangladesh with a resolution of 30 min, the Attention-based encoder-decoder, Transformer, and Temporal Fusion Transformer (TFT) models are trained and tested to predict over 24 steps ahead and compared with other forecasting models. According to our findings, adding the attention mechanism significantly increased prediction accuracy and TFT has shown to be more precise than the rest of the algorithms in terms of accuracy and robustness. The obtained mean square error (MSE), the mean absolute error (MAE), and the coefficient of determination (R²) values for TFT are 0.151, 0.212, and 0.815, respectively. In comparison to the benchmark and sequential models (including the Naive, MLP, and Encoder-Decoder models), TFT has a reduction in the MSE and MAE of 8.4–47.9% and 6.1–22.3%, respectively, while R² is raised by 2.13–26.16%. The ability to incorporate long-distance dependency increases the predictive power of attention models.

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Citations (4)


... This combination holds immense potential for improving the reliability and accuracy of water quality predictions. The demonstration in other fields such as greenhouse temperature and solar irradiance forecasting Sakib, 2024) further solidifies the potential. The results reveal that our model achieves a mean square error (MSE) of 3987.56 and 4356.39, a root mean square error (RMSE) of 63.14 and 66.00, a mean absolute error (MAE) of 62.49 and 65.43, and a coefficient of determination (R²) 0.91 and 0.88 for training and testing datasets, respectively. ...

Reference:

An enhanced multi-head attention-based LSTM model for forecasting the surface water quality index
Attention-Based Models for Multivariate Time Series Forecasting: Multi-step Solar Irradiation Prediction

Heliyon

... This article's goal is to provide a concise review of key ideas in the subject of nuclear thermal hydraulics as well as the various computer programs available for simulating THrelated events with the System codes (SYS-TH), sub-channel codes, and CFD codes. The final goal of this work is to use the CFD code Ansys Fluent to assess convective heat transfer in sub-channels of rod bundles and triangle tubes of VVER-type nuclear reactors, [43], [44], [45], [46], [47], [48], [49], [50]. Additionally, CFD approaches assist in obtaining the precise temperature and flow distributions within assemblies of rod bundles in square and triangle sub-channels. ...

Thermal hydraulic analysis in triangular sub-channel for 3MW TRIGA mark II research reactor
  • Citing Conference Paper
  • September 2023

IET Conference Proceedings

... This feature has been ingeniously exploited in biosensing applications, where the selective interaction between target biomolecules and the guided light within the PCF enables highly sensitive and specific detection. Surface Plasmon Resonance (SPR), a key phenomenon in sensing, occurs when light at a specific angle of incidence excites electrons within a thin metal fields, including biomedical applications, environmental sensing, petrochemical sensing, and industries such as food and beverages [4][5][6]. Cancer, a devastating global health concern characterized by uncontrolled cell growth, remains a leading cause of mortality. Around 19.3 million new cancer cases were documented worldwide in 2020, leading to near about 10.0 million cancer related deaths. ...

Silicate-glass based photonic crystal fiber for rapid petro-chemical sensing: Design and analysis

Sensing and Bio-Sensing Research

... with specific optical properties, is challenging due to the problem's nonlinearity and the complex relationship between nanostructure properties and optical responses [14]. Despite the efficiency of machine learning (ML) [15] in addressing these issues, its generalization capabilities are often limited. Deep learning (DL), with its multi-layer neural network architecture, offers improved feature extraction and regression accuracy, making it a leading approach in the field, despite its own set of challenges [16][17][18]. ...

Machine Learning Assisted Decision Support System for Prediction of Prostrate Cancer
  • Citing Conference Paper
  • May 2023