A
machine learning based approach for prediction and interpretation of soil
properties from soil spectral data
A. Divya, R.
Josphineleela and L. Jaba Sheela*
Department
of Computer Science and Engineering, Panimalar Engineering College,
Chennai-600 123, India
Received:
02
April 2023 Revised: 23 October 2023 Accepted:
04 November 2023
*Corresponding Author Email : ljsheela@panimalar.ac.in
*ORCiD:
https://orcid.org/0000-0002-7182-5582
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Abstract
Aim:
An
active agricultural sector depends on good soil quality, essential for
sustained food cultivation. However, intensive farming and rising demand can
lead to soil deterioration, affecting crop yields. Smart soil prediction
driven by machine learning is crucial for precision farming and efficient
nutrient distribution.
Methodology: Visible-near
infrared Spectroscopy (vis-NIRS) is used to capture the soil's spectral
data.Then, the spectral data is preprocessed with Savitzky-Golay
Smoothing.The data that has been preprocessed is then used to train the
machine learning model.The preprocessed data enhances model performance
compared to spectral reflectance data in its unprocessed state.The machine
learning model acquires data-based knowledge, identifies patterns, and
predicts soil quality parameters. The Random Forest and Gradient Boosted
Regression Tree are two algorithms employed in this study.
Results: The spectral
reflectance data is used to train, validate, and evaluate the machine
learning model.In determining soil properties, both algorithms demonstrated a
high degree of prediction accuracy, as demonstrated by the results.Gradient
Boosted Regression Tree out performs Random Forest, but is expensive and
requires sequential data. Random forest algorithm works well with large
datasets, but over-fitting issues arise in some instances.
Interpretation: The findings of
the study indicate that machine learning can automate the current soil
testing procedure in laboratories, thereby making it more efficient,
affordable, and environmentally friendly.
Key
words:
Gradient Boosted Regression Tree, Machine learning, Random forest, Soil
fertility, Soil moisture
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