Time series analysis involves collecting and analyzing observations on a quantitative variable over time to forecast future behaviors. Key components of time series include trends, cycles, seasonal variations, and random variations, with various forecasting methods such as regression and moving averages. Different techniques for measuring accuracy, model selection, and forecasting techniques like exponential smoothing are essential for effective time series modeling.