Machine Learning approach to Predict net radiation over crop surfaces from global solar radiation and canopy temperature data.

Journal: International journal of biometeorology
PMID:

Abstract

As the ground-based instruments for measuring net radiation are costly and need to be handled skillfully, the net radiation data at spatial and temporal scales over Indian subcontinent are scanty. Sometimes, it is necessary to use other meteorological parameters to estimate the value of net radiation, although the prediction may vary based on season, ground cover and estimation method. In this context, artificial intelligence can be used as a powerful tool for predicting the data considering past observed data. This paper proposes a novel method to predict the net radiation for five crop surfaces using global solar radiation and canopy temperature. This contribution includes the generation of real-time data for five crops grown in West Bengal state of India. After manual analysis and data preprocessing, data normalization has been done before applying machine learning approaches for training a robust model. We have presented the comparison in various machine learning algorithm such as ridge and spline regression, random forest, ensemble and deep neural networks. The result shows that the gradient boosting regression and ridge regression are outperforming other ML approaches. The estimated predictors enable to reduce the number of resources in terms of time, cost and manpower for proper net radiation estimation. Thus, the problem of predicting net radiation over various crop surfaces can be sorted out through ML algorithm.

Authors

  • Saon Banerjee
    Department of Agricultural Meteorology and Physics, Faculty of Agriculture, BCKV, Mohanpur, PIN: 741252, West Bengal, India. sbaner2000@yahoo.com.
  • Gaurav Singal
    Department of Computer Science Engineering, Netaji Subhas University of Technology, Delhi, PIN: 110078, India.
  • Sarathi Saha
    Department of Agricultural Meteorology and Physics, Faculty of Agriculture, BCKV, Mohanpur, PIN: 741252, West Bengal, India.
  • Himanshu Mittal
    Department of Computer Science Engineering, SEAS, Bennett University, Greater Noida, PIN: 201308, Uttar Pradesh, India.
  • Manu Srivastava
    Department of Computer Science, Manipal University, Manipal, PIN: 302017, Rajasthan, India.
  • Asis Mukherjee
    Department of Agricultural Meteorology and Physics, Faculty of Agriculture, BCKV, Mohanpur, PIN: 741252, West Bengal, India.
  • Sayak Mahato
    Department of Agricultural Meteorology and Physics, Faculty of Agriculture, BCKV, Mohanpur, PIN: 741252, West Bengal, India.
  • Barnali Saikia
    Department of Agrometeorology, SCS College of Agriculture, AAU, Rangamati, Dhubri, PIN: 783376, Assam, India.
  • Sudipta Thakur
    Department of Agricultural Meteorology and Physics, Faculty of Agriculture, BCKV, Mohanpur, PIN: 741252, West Bengal, India.
  • Suman Samanta
    Division of Agricultural Physics. IARI, New Delhi, PIN: 110012, India.
  • Riti Kushwaha
    Department of Computer Science, Bennett University, Greater Noida, India.
  • Deepak Garg
    Department of Computer Science Engineering, SEAS, Bennett University, Greater Noida, PIN: 201308, Uttar Pradesh, India.