The single-cycle gas turbine power plants produce electricity by using natural gas and compressed air. 

FREMONT, CA : By utilizing natural gas and compressed air, single-cycle gas turbine power plants produce electricity. Air is taken from the surroundings, compressed, and pumped into the gas turbine combustion chamber. Natural gas is pumped here, which blends with and ignites the compressed air. The combustion creates a lot of water pressure, hot gas that flows through the turbine, helping it spin (at high speeds). Therefore, this spins a generator to generate electricity that is connected to the turbine.

Most of the energy is lost as hot exhaust accomplishing an energy conversion efficiency of 35 percent at best for single-cycle gas turbines. By collecting the waste heat using a heat recovery steam generator (HRSG), combined cycle power plants harness this inefficiency to generate even more power.

Combined cycle power plants are power generating plants that produce electricity using gas and steam turbines, respectively. The waste heat produced from the gas turbine is utilized for generating steam that is pumped to a steam turbine to make even more energy. For the same amount of fuel, it increases the power generated (up to 50 percent more) and increases the plant's performance to around 60 percent.

The Combined Cycle Power Plant (CCPP) output power depends on several parameters, like atmospheric pressure, exhaust vapor pressure, ambient temperature, and relative humidity. It is critical for the efficient and economical operation of the power plant to be able to predict full load electrical power production.

Exploratory Data Analysis

First, companies must load the files after transporting all the python libraries.

Develop the model

The companies can use various machine learning algorithms and different combinations of features to create multiple regression models. They can decide to use Linear Regression, Decision Tree Regression, and Random Forest Regression algorithms on the dataset.

Performance evaluation

Whenever a machine learning model is developed, it is essential to evaluate its performance to ensure that it yields useful outputs and does not overfit. There are three main performance metrics for regression problems used to measure how well the model performs. They are Root Mean Squared Error (RMSE), R-Squared, and Mean Absolute Error.