Abstract
Time series data analysis and forecasting stands as a critical
information source, shaping future decision-making, strategy
formulation, and operational planning across diverse industries.
Ranging from marketing and finance to education, healthcare, and
robotics, the time series data has become pivotal in guiding effective
actions. Time series data analysis plays a pivotal role in understanding
sequential trends and patterns present in the data. The Time series
forecasting has been used for prediction for effective decision making.
The forecasting techniques consist of statistical models and machine
learning models. This paper examines different methods, including AR,
MA, ARMA, ARIMA, SARIMA, ARIMAX, SARIMAX, Prophet and
LSTM. Two meteorological datasets have been analyzed and the above
models have been applied and evaluated using various performance
metrics.
Authors
Simranjeet Kaur, Jayshree Kundargi
Somaiya Vidyavihar University, K.J. Somaiya College of Engineering, India
Keywords
Time Series Analysis, Forecasting, Statistical Models, Prophet, LSTM