Time Series Analysis of Climatic Change
| AUTHOR | P. K., Sivakumaran; N, Mani; S, Rithika |
| PUBLISHER | LAP Lambert Academic Publishing (07/24/2025) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
This book explores the importance of accurate rainfall forecasting for water resource management, agriculture, and disaster preparedness. It presents a comparative analysis of two forecasting models-Support Vector Regression (SVR) and Seasonal Auto Regressive Integrated Moving Average (SARIMA)-using historical rainfall data from 2008 to 2021 to predict trends from 2022 to 2026. Through statistical and visualization techniques such as trend analysis, moving averages, box plots, heatmaps, Z-scores, and density plots, the study identifies patterns and anomalies in rainfall data. While both models show good predictive ability, SVR demonstrates superior performance, especially in capturing complex, non-linear patterns. The book highlights the advantages of integrating machine learning methods with traditional statistical tools to improve rainfall forecasting and support data-driven decisions in agriculture, environmental planning, and climate resilience.
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Product Format
Product Details
ISBN-13:
9786207996124
ISBN-10:
6207996127
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
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Page Count:
88
Carton Quantity:
80
Product Dimensions:
6.00 x 0.21 x 9.00 inches
Weight:
0.28 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Unassigned | Probability & Statistics - General
Descriptions, Reviews, Etc.
publisher marketing
This book explores the importance of accurate rainfall forecasting for water resource management, agriculture, and disaster preparedness. It presents a comparative analysis of two forecasting models-Support Vector Regression (SVR) and Seasonal Auto Regressive Integrated Moving Average (SARIMA)-using historical rainfall data from 2008 to 2021 to predict trends from 2022 to 2026. Through statistical and visualization techniques such as trend analysis, moving averages, box plots, heatmaps, Z-scores, and density plots, the study identifies patterns and anomalies in rainfall data. While both models show good predictive ability, SVR demonstrates superior performance, especially in capturing complex, non-linear patterns. The book highlights the advantages of integrating machine learning methods with traditional statistical tools to improve rainfall forecasting and support data-driven decisions in agriculture, environmental planning, and climate resilience.
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Your Price
$60.56
