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Project Number (3111):
Free Download of MATLAB Simulation File for Noninvasive Online Condition Monitoring of Output Capacitor’s ESR and C for a Flyback Converter
YouTube link : https://youtu.be/9cTYRPTKcXw
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Free Download of MATLAB Simulation File for Noninvasive Online Condition Monitoring of Output Capacitor’s ESR and C for a Flyback Converter
YouTube link : https://youtu.be/9cTYRPTKcXw
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
Power Electrical Developing Advanced Research (PEDAR) Group
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Exploring the Diverse Types of Neural Networks in AI 🤖
In the rapidly evolving field of artificial intelligence, understanding the different types of neural networks is crucial. Each type offers unique capabilities and applications. Let's delve into the various kinds of neural networks:
Perceptron 🧠
The perceptron is the simplest form of a neural network, consisting of a single neuron. It is primarily used for binary classification tasks, distinguishing between two distinct classes.
Feed-Forward Networks (FFNs) ➡️
Feed-forward networks are structured so that data flows in a single direction—from input to output. These networks are foundational in machine learning, useful for tasks such as prediction and classification.
Multi-Layer Perceptron (MLP) 🎛
Multi-layer perceptrons extend the concept of the perceptron by incorporating one or more hidden layers between the input and output layers. This architecture allows MLPs to capture complex patterns and interactions within the data.
Radial Basis Function Networks (RBFNs) 🎯
RBF networks utilize radial basis functions as activation functions. They are particularly effective for classification and regression problems, leveraging the properties of these functions to model complex relationships.
Convolutional Neural Networks (CNNs) 🖼
Convolutional neural networks are designed for processing visual data. By applying convolutional layers, CNNs can automatically and adaptively learn spatial hierarchies of features from input images, making them indispensable for image and video recognition tasks.
Recurrent Neural Networks (RNNs) 🔄
Recurrent neural networks are adept at handling sequential data due to their inherent structure, which allows them to maintain a 'memory' of previous inputs. This makes RNNs suitable for tasks such as time series forecasting, language modeling, and speech recognition.
Long Short-Term Memory Networks (LSTMs) ⏳
LSTMs are a specialized type of RNN designed to address the vanishing gradient problem. They excel at learning long-term dependencies, making them ideal for applications requiring the retention of information over extended periods, such as complex sequence prediction and natural language processing.
Power Electrical Developing Advanced Research (PEDAR) Group
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In the rapidly evolving field of artificial intelligence, understanding the different types of neural networks is crucial. Each type offers unique capabilities and applications. Let's delve into the various kinds of neural networks:
Perceptron 🧠
The perceptron is the simplest form of a neural network, consisting of a single neuron. It is primarily used for binary classification tasks, distinguishing between two distinct classes.
Feed-Forward Networks (FFNs) ➡️
Feed-forward networks are structured so that data flows in a single direction—from input to output. These networks are foundational in machine learning, useful for tasks such as prediction and classification.
Multi-Layer Perceptron (MLP) 🎛
Multi-layer perceptrons extend the concept of the perceptron by incorporating one or more hidden layers between the input and output layers. This architecture allows MLPs to capture complex patterns and interactions within the data.
Radial Basis Function Networks (RBFNs) 🎯
RBF networks utilize radial basis functions as activation functions. They are particularly effective for classification and regression problems, leveraging the properties of these functions to model complex relationships.
Convolutional Neural Networks (CNNs) 🖼
Convolutional neural networks are designed for processing visual data. By applying convolutional layers, CNNs can automatically and adaptively learn spatial hierarchies of features from input images, making them indispensable for image and video recognition tasks.
Recurrent Neural Networks (RNNs) 🔄
Recurrent neural networks are adept at handling sequential data due to their inherent structure, which allows them to maintain a 'memory' of previous inputs. This makes RNNs suitable for tasks such as time series forecasting, language modeling, and speech recognition.
Long Short-Term Memory Networks (LSTMs) ⏳
LSTMs are a specialized type of RNN designed to address the vanishing gradient problem. They excel at learning long-term dependencies, making them ideal for applications requiring the retention of information over extended periods, such as complex sequence prediction and natural language processing.
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PowerMatlab
Dear friends
This channel shares all your needed matlab codes and simulation files in field of power electrical engineering. Everyone is welcome to download and use the codes and simulation files. Please let us know if you have any questions or comments.…
This channel shares all your needed matlab codes and simulation files in field of power electrical engineering. Everyone is welcome to download and use the codes and simulation files. Please let us know if you have any questions or comments.…
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Why is solar energy important?
🌏 The Earth has infinite solar energy ☀️!
In this fascinating video, Richard Kemp explains simply and clearly how solar panels convert sunlight into electricity.
Advantages of using solar panels include:
📌Reducing energy costs
📌Reducing air pollution
📌Providing clean and unlimited energy
Watch the video to find out how solar energy can transform our future.
Power Electrical Developing Advanced Research (PEDAR) Group
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🌏 The Earth has infinite solar energy ☀️!
In this fascinating video, Richard Kemp explains simply and clearly how solar panels convert sunlight into electricity.
Advantages of using solar panels include:
📌Reducing energy costs
📌Reducing air pollution
📌Providing clean and unlimited energy
Watch the video to find out how solar energy can transform our future.
Power Electrical Developing Advanced Research (PEDAR) Group
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ACDCMicrogrids_3112.rar
7.5 MB
Project Number (3112): Free download of Matlab Simulation file for Hybrid AC/DC microgrid test system simulation: grid connected and Island Modes
Free training Video : 👇👇
YouTube link : https://youtu.be/XxCoB_Zi3ug
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Free training Video : 👇👇
YouTube link : https://youtu.be/XxCoB_Zi3ug
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Preventing step voltage in case of power cable breakage
Power Electrical Developing Advanced Research (PEDAR) Group
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Dear Colleagues,
We are thrilled to announce that a Special Issue titled "AI-Based Modelling and Control of Power Systems" is now open for submissions.
This Special Issue is proudly supported by the Power Electrical Developing Advanced Research (PEDAR) Group and is hosted by the journal Processes (ISSN 2227-9717). This issue belongs to the "Energy Systems" section of the journal.
👉More details and submission entrance: https://www.mdpi.com/journal/processes/special_issues/N06O7BQX80
👉 Guest Editors:
Dr Mohammad Reza Maghami
Assoc. Prof. Javad Rahebi
Dr. Mehdi Zareian Jahromi
📆 Deadline for manuscript submissions: 03 March 2025.
Power Electrical Developing Advanced Research (PEDAR) Group
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We are thrilled to announce that a Special Issue titled "AI-Based Modelling and Control of Power Systems" is now open for submissions.
This Special Issue is proudly supported by the Power Electrical Developing Advanced Research (PEDAR) Group and is hosted by the journal Processes (ISSN 2227-9717). This issue belongs to the "Energy Systems" section of the journal.
👉More details and submission entrance: https://www.mdpi.com/journal/processes/special_issues/N06O7BQX80
👉 Guest Editors:
Dr Mohammad Reza Maghami
Assoc. Prof. Javad Rahebi
Dr. Mehdi Zareian Jahromi
📆 Deadline for manuscript submissions: 03 March 2025.
Power Electrical Developing Advanced Research (PEDAR) Group
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🔊 PowerMatlab is excited to showcase the incredible opportunities of Deep Learning. This cutting-edge technology has the potential to revolutionize various fields, including sports performance, industrial maintenance, machine translation, speech recognition, and many more.
🌟 A Smarter and More Efficient Future with Deep Learning 🌟
Deep Learning is rapidly evolving, providing numerous opportunities for innovation and enhanced performance across multiple domains. Notably, it has applications in:
Self-driving cars
Investment portfolio management
Image recognition for the visually impaired
Healthcare diagnosis
Join us as we leverage this advanced technology to make the world a better place.
📧 For more information and collaboration, contact us at:
info@powermatlab.com
electricalmatlab@gmail.com
🌐 Website: www.powermatlab.com
🔬🚀🤖🌍💡
#DeepLearning #AI #ArtificialIntelligence #MachineLearning
🌟 A Smarter and More Efficient Future with Deep Learning 🌟
Deep Learning is rapidly evolving, providing numerous opportunities for innovation and enhanced performance across multiple domains. Notably, it has applications in:
Self-driving cars
Investment portfolio management
Image recognition for the visually impaired
Healthcare diagnosis
Join us as we leverage this advanced technology to make the world a better place.
📧 For more information and collaboration, contact us at:
info@powermatlab.com
electricalmatlab@gmail.com
🌐 Website: www.powermatlab.com
🔬🚀🤖🌍💡
#DeepLearning #AI #ArtificialIntelligence #MachineLearning
ACDCMicrogrids_3113.rar
15.3 MB
Project Number (3113): Free download of Matlab Simulation file for Transition of Hybrid AC/DC Microgrid Between Grid Connected Mode and Islanding Mode during the Operation
Free training Video : 👇👇
YouTube link : https://youtu.be/liEeO85KHDs
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
Power Electrical Developing Advanced Research (PEDAR) Group
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Free training Video : 👇👇
YouTube link : https://youtu.be/liEeO85KHDs
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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The field of machine learning is vast, and mastering the key techniques is crucial for any aspiring data scientist or AI enthusiast. Here’s a quick rundown of 11 critical machine learning methods that are fundamental to driving innovation and success in various applications:
Regression 📈: Used to predict continuous outcomes, this method helps in understanding relationships between variables.
Classification 📊: This technique is essential for categorizing data into predefined classes, a backbone for many AI systems.
Clustering 📚: Grouping similar data points together, clustering is key in pattern recognition and data segmentation.
Dimensionality Reduction 💡: Simplifies complex datasets by reducing the number of random variables, enhancing computational efficiency.
Ensemble Methods 🎲: Combines multiple models to improve the accuracy and robustness of predictions.
Neural Networks and Deep Learning 🤖: Mimicking the human brain, these models are at the core of AI, enabling advancements in image and speech recognition.
Transfer Learning 🔄: Leverages pre-trained models to solve new but similar problems, reducing the need for large datasets.
Reinforcement Learning 🕹: Learns optimal actions through trial and error, widely used in robotics and game AI.
NLP (Neuro-Linguistic Programming) 🧠: Enables machines to understand and respond to human language, powering chatbots and voice assistants.
Computer Vision 👁: Empowers machines to interpret and make decisions based on visual data, a key component in autonomous vehicles.
PowerMatlab Community 💻: A resourceful community for sharing insights and developments in machine learning.
These methods form the foundation of machine learning, each with its unique strengths and applications. Staying updated on these techniques is crucial for anyone looking to make a significant impact in the AI landscape.
#MachineLearning #ArtificialIntelligence #DataScience #DeepLearning #NeuralNetworks #NLP #ComputerVision #Clustering #Classification #Regression #TransferLearning #ReinforcementLearning #DimensionalityReduction #EnsembleMethods #AI #BigData #TechInnovation #Robotics #Automation #PredictiveAnalytics #AICommunity
Regression 📈: Used to predict continuous outcomes, this method helps in understanding relationships between variables.
Classification 📊: This technique is essential for categorizing data into predefined classes, a backbone for many AI systems.
Clustering 📚: Grouping similar data points together, clustering is key in pattern recognition and data segmentation.
Dimensionality Reduction 💡: Simplifies complex datasets by reducing the number of random variables, enhancing computational efficiency.
Ensemble Methods 🎲: Combines multiple models to improve the accuracy and robustness of predictions.
Neural Networks and Deep Learning 🤖: Mimicking the human brain, these models are at the core of AI, enabling advancements in image and speech recognition.
Transfer Learning 🔄: Leverages pre-trained models to solve new but similar problems, reducing the need for large datasets.
Reinforcement Learning 🕹: Learns optimal actions through trial and error, widely used in robotics and game AI.
NLP (Neuro-Linguistic Programming) 🧠: Enables machines to understand and respond to human language, powering chatbots and voice assistants.
Computer Vision 👁: Empowers machines to interpret and make decisions based on visual data, a key component in autonomous vehicles.
PowerMatlab Community 💻: A resourceful community for sharing insights and developments in machine learning.
These methods form the foundation of machine learning, each with its unique strengths and applications. Staying updated on these techniques is crucial for anyone looking to make a significant impact in the AI landscape.
#MachineLearning #ArtificialIntelligence #DataScience #DeepLearning #NeuralNetworks #NLP #ComputerVision #Clustering #Classification #Regression #TransferLearning #ReinforcementLearning #DimensionalityReduction #EnsembleMethods #AI #BigData #TechInnovation #Robotics #Automation #PredictiveAnalytics #AICommunity
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Project Number (3114): How to Perform Supervised Machine Learning Without Programming
Free training Video : 👇👇
YouTube link : https://youtu.be/vrpkAv8Iozw
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Free training Video : 👇👇
YouTube link : https://youtu.be/vrpkAv8Iozw
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Project Number (3115): A Real-Time and Online Dynamic Reconfiguration against Cyber-Attacks to Enhance Security and Cost-Efficiency in Smart Power Microgrids Using Deep Learning
Free training Video : 👇👇
YouTube link : https://youtu.be/XTxKGUN5vHQ
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Free training Video : 👇👇
YouTube link : https://youtu.be/XTxKGUN5vHQ
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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Free download of Matlab Codes (PART 33):
1-How to perform a simulation in real time in MATLAB Simulink
2- How to perform a simulation in parallel Computing in MATLAB Software
3-What is the differential Between Optimal Power Flow (OPF) and Optimal Energy Management (OEM)
4-How to Call Python from MATLAB
5-How to Seek Assistance for MATLAB Programming Using AI (ChatGPT)
6- How to Utilize ChatGPT for Simulating Your Target Model
7-Free Download of MATLAB Simulation File for Noninvasive Online Condition Monitoring of Output Capacitor’s ESR and C for a Flyback Converter
8-Free download of Matlab Simulation file for Hybrid AC/DC microgrid test system simulation: grid connected and Island Modes
9-Free download of Matlab Simulation file for Transition of Hybrid AC/DC Microgrid Between Grid Connected Mode and Islanding Mode during the Operation
10- How to Perform Supervised Machine Learning Without Programming
11-A Real-Time and Online Dynamic Reconfiguration against Cyber-Attacks to Enhance Security and Cost-Efficiency in Smart Power Microgrids Using Deep Learning
Return to the beginning of the channel
Power Electrical Developing Advanced Research (PEDAR) Group.
1-How to perform a simulation in real time in MATLAB Simulink
2- How to perform a simulation in parallel Computing in MATLAB Software
3-What is the differential Between Optimal Power Flow (OPF) and Optimal Energy Management (OEM)
4-How to Call Python from MATLAB
5-How to Seek Assistance for MATLAB Programming Using AI (ChatGPT)
6- How to Utilize ChatGPT for Simulating Your Target Model
7-Free Download of MATLAB Simulation File for Noninvasive Online Condition Monitoring of Output Capacitor’s ESR and C for a Flyback Converter
8-Free download of Matlab Simulation file for Hybrid AC/DC microgrid test system simulation: grid connected and Island Modes
9-Free download of Matlab Simulation file for Transition of Hybrid AC/DC Microgrid Between Grid Connected Mode and Islanding Mode during the Operation
10- How to Perform Supervised Machine Learning Without Programming
11-A Real-Time and Online Dynamic Reconfiguration against Cyber-Attacks to Enhance Security and Cost-Efficiency in Smart Power Microgrids Using Deep Learning
Return to the beginning of the channel
Power Electrical Developing Advanced Research (PEDAR) Group.
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Project Number (3108):
How to perform a simulation in real time in MATLAB Simulink
Download link : https://www.tgoop.com/powermatlab/551
LinkedinPage: https://lnkd.in/eYTRE84s
Instagram ID: @power_matlab
Power Electrical Developing Advanced Research (PEDAR)…
How to perform a simulation in real time in MATLAB Simulink
Download link : https://www.tgoop.com/powermatlab/551
LinkedinPage: https://lnkd.in/eYTRE84s
Instagram ID: @power_matlab
Power Electrical Developing Advanced Research (PEDAR)…
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Project Number (3116): Adapted Voltage Control in Power Grids with Wind Turbines Using STATCOM Integration
Free training Video : 👇👇
YouTube link : https://youtu.be/yGqr0kKDpf8
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
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👇👇
Free training Video : 👇👇
YouTube link : https://youtu.be/yGqr0kKDpf8
Instagram ID : https://www.instagram.com/power_matlab?r=nametag
Power Electrical Developing Advanced Research (PEDAR) Group
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