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Spatio-Temporal Deep Gaussian Hybrid Network (STDGH-Net) for Onion Crop Yield and Price Prediction

DOI : 10.17577/IJERTCONV14IS020176
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Spatio-Temporal Deep Gaussian Hybrid Network (STDGH-Net) for Onion Crop Yield and Price Prediction

Mr. Deokar S.R.

Assistant professor, Department of Computer Science,

P.V.P. College, Pravaranagar, India, 413713

Dr. Pawar R.A.

Assistant professor, Department of Physics,

P.V.P. College, Pravaranagar, India, 413713

Mr. Gujar S.D

Assistant professor, , Department of Computer Science,

P.V.P. College, Pravaranagar, India, 413713

Abstract – Onion (Allium cepa L.) is a high-value horticultural crop in India, characterized by strong seasonal price volatility, sensitivity to climatic stress, and region-specific soil requirements. Accurate prediction of onion yield, market price, and crop stress is crucial for farmers, traders, and policymakers. This paper extends the previously proposed Spatio-Temporal Deep Gaussian Hybrid Network (STDGH-Net) and applies it specifically to onion crop analytics. The model integrates Convolutional Neural Networks (CNN) for spatial feature extraction from satellite imagery, Long Short-Term Memory (LSTM) networks for temporal modeling of climate and market data, and Deep Gaussian Processes (DGP) for probabilistic forecasting with uncertainty estimation. Experimental evaluation using multi-source datasets from Maharashtra demonstrates improved accuracy in onion yield forecasting, price prediction, and stress detection, along with reliable uncertainty bounds to support risk-aware cultivation and marketing decisions.

Keywords: Onion Crop, Deep Learning, CNN, LSTM, Deep Gaussian Process, Yield Prediction, Price Forecasting, Precision Agriculture.

  1. INTRODUCTION

    Onion is one of the most commercially important vegetable crops in India, contributing significantly to farmer income and national food supply. However, onion cultivation faces challenges such as irregular rainfall, temperature extremes during bulb formation, soil moisture stress, pest attacks, and extreme market price fluctuations. Traditional statistical models are insufficient to capture the nonlinear and spatio- temporal dependencies present in onion farming systems.

    To address these challenges, this study applies STDGH-Net to onion crop data, enabling integrated analysis of satellite imagery, weather time series, soil parameters, and market prices. The objective is to develop a robust decision-support framework for onion cultivation planning and price risk management.

  2. LITERATURE REVIEW

    Previous studies on onion crop prediction have primarily relied on regression models, ARIMA-based price forecasting, and classical machine learning approaches such as Random Forests and Support Vector Machines. While these methods provide baseline insights, they fail to jointly model spatial variability (crop health patterns), temporal dynamics (seasonality and market cycles), and predictive uncertainty. Recent deep learning approaches using CNNs and LSTMs show promise but lack probabilistic interpretation. STDGH- Net overcomes these limitations by unifying deep feature learning with uncertainty-aware prediction.

  3. MATERIALS AND METHODS

    1. Overview of STDGH-Net Architecture

      The proposed framework consists of three interconnected modules:

      1. CNN Spatial Encoder extracts vegetation and stress features from satellite images.

      2. LSTM Temporal Encoder models time-series patterns from weather and price data.

      3. Deep Gaussian Process Layer provides probabilistic yield and price predictions with uncertainty estimation.

      4. DATASET DESCRIPTION (ONION CROP) Figure 1: Sentinel-2 Satellite Imagery of Onion Fields

        Representative true-color Sentinel-2 images showing onion cultivation areas in Ahmednagar and Nashik districts.

        Figure 2: Vegetation Indices for Onion Crop Monitoring

        (a) NDVI map indicating crop vigor, (b) EVI map highlighting dense canopy regions, (c) SAVI map adjusting for soil background effects.

        1. Satellite Data

          • Source: Sentinel-2 MSI

          • Region: Ahmednagar and Nashik districts, Maharashtra

          • Spatial Resolution: 10 m

          • Duration: 20192024

          • Features extracted: NDVI, EVI, SAVI, soil reflectance bands

            Table 1: Satellite-Derived Vegetation Features for Onion Crop

            Feature

            Min

            Max

            Mean

            NDVI

            0.18

            0.86

            0.61

            SAVI

            0.16

            0.80

            0.55

            EVI

            0.10

            0.68

            0.39

        2. Soil Data

          Collected from soil testing laboratories and IoT sensors.

          Table 2: Soil Parameters for Onion Fields

          Parameter

          Unit

          Mean

          Std Dev

          Soil pH

          6.8

          0.4

          Nitrogen (N)

          kg/ha

          110.5

          11.2

          Phosphorus (P)

          kg/ha

          48.3

          7.6

          Potassium (K)

          kg/ha

          295.6

          26.4

          Soil Moisture

          %

          19.4

          4.1

        3. Weather Data

          • Rainfall, temperature, humidity (20142024)

            Table 3: Climatic Statistics for Onion Growing Seasons

            Parameter

            Mean

            Range

            Rainfall (mm/month)

            76

            0310

            Temperature (°C)

            27.9

            1640

            Humidity (%)

            61

            2886

        4. Market Price Data

          Onion prices collected from APMC markets.

          Table 4: Onion Market Price Statistics

          Year

          Min Price (/q)

          Max Price (/q)

          Average

          2019

          420

          1,820

          960

          2020

          550

          2,400

          1,320

          2022

          480

          3,200

          1,740

          2024

          620

          2,850

          1,690

      5. Model Configuration

        1. CNN Parameters

          Parameter

          Value

          Input Size

          256×256×3

          Filters

          32, 64, 128

          Activation

          ReLU

          Output Vector

          512-d

        2. LSTM Parameters

          Parameter

          Value

          Time Steps

          120 months

          Units

          128

          Dropout

          0.2

        3. DGP Configuration

          Layer

          Kernel

          Layer 1

          RBF

          Layer 2

          Matérn

          Output

          Mean + Variance

        4. /ol>

        5. Experimental Results (Onion Crop)

          1. Yield Prediction Results

            Table 5: Onion Yield Prediction Performance

            Model

            RMSE (kg/ha)

            MAE

            ARIMA

            412

            290

            0.58

            Random Forest

            305

            218

            0.74

            LSTM

            236

            172

            0.81

            CNNLSTM

            204

            149

            0.87

            STDGH-Net

            162

            118

            0.92

          2. Price Forecasting Results

            Table 6: Onion Price Prediction Accuracy

            Model

            RMSE ()

            MAE ()

            Uncertainty

            ARIMA

            460

            380

            LSTM

            318

            260

            CNNLSTM

            274

            221

            STDGH-Net

            198

            156

            Low

        6. DISCUSSION

          Results indicate strong correlation between NDVI and onion bulb yield, while soil moisture and temperature during bulb enlargement significantly influence final production. STDGH-Net effectively captures extreme price spikes commonly observed in onion markets and provides uncertainty bounds useful for marketing decisions.

        7. APPLICATIONS

            • Onion yield forecasting

            • Price volatility management

            • Stress and disease detection

            • Cultivation scheduling

            • Policy-level crop advisory systems

        8. CONCLUSION

    This study demonstrates that STDGH-Net is highly effective for onion crop analytics. By integrating satellite imagery, soil data, climate records, and market prices, the model delivers accurate yield and price predictions with quantified uncertainty. The framework supports precision onion farming and informed decision-making for farmers and policymakers.

    REFERENCES

    1. J. Liang, Y. Zhang, and M. Xu, Deep learning for crop yield prediction based on remote sensing and climate data, IEEE Access, vol. 7, pp. 183464-183475, 2019.

    2. R. Kamilaris and F. Prenafeta-Boldú, Deep learning in agriculture: A survey, Computers and Electronics in Agriculture, vol. 147, pp. 70-90, 2018.

    3. G. Mulla, Twenty five years of remote sensing in precision agriculture: Key advances and remaining knowledge gaps, Biosystems Engineering, vol. 114, pp. 4-20, 2013.

    4. S. Hochreiter and J. Schmidhuber, Long short-term memory,

      Neural Computation, vol. 9, no. 8, pp. 1735-1780, 1997.

    5. A. Krizhevsky, I. Sutskever, and G. E. Hinton, ImageNet classification with deep convolutional neural networks, Communications of the ACM, vol. 60, no. 6, pp. 84-90, 2017.

    6. C. E. Rasmussen and C. K. I. Williams, Gaussian Processes for Machine Learning, MIT Press, 2006.

    7. M. U. G. Krause, D. L. Erickson, and C. Funk, Deep Gaussian Processes for probabilistic time-series forecasting with uncertainty estimation, in Proc. ICML, 2018, pp. 3173-3182.

    8. E. Rogers, D. K. Thompson, and T. Lillesand, Vegetation index performance for quantifying crop biomass, Remote Sensing of Environment, vol. 97, no. 2, pp. 172-182, 2005.

    9. P. R. Dutta, A. Bhadra and S. Ghosh, Satellite derived vegetation indices for crop classification and yield estimation, International Journal of Applied Earth Observation and Geoinformation, vol. 72, pp. 30-43, 2018.

    10. S. Arya, R. Mahajan, and B. Mendiratta, Market price forecasting using LSTM networks: An Indian commodity perspective, Journal of Big Data Analytics in Agriculture, vol. 2, no. 1, pp. 15-28, 2020.

    11. M. T. Javaid and A. A. Khan, Sentinel-2 based agricultural monitoring: Exploring spectral bands and indices for crop health assessment, Remote Sensing Applications: Society and Environment, vol. 20, pp. 100396, 2020.

    12. D. D. Hallegatte, Agricultural market volatility and price spikes in developing economies, Food Policy, vol. 101, pp. 102077, 2021.

    13. F. Schmieder, S. Pflugfelder, and J. Schlenker, Uncertainty quantification in yield and price forecasting using Gaussian Process regressions, Computers and Electronics in Agriculture, vol. 162, pp. 892-905, 2019.

    14. L. Wang, Y. Zhao, and J. Sun, Spatio-temporal deep learning for crop yield prediction: An integrative review, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol. 13, pp. 4569-4588, 2020.

    15. U. Singh and V. Goyal, Precision agriculture: Sensor fusion and AI techniques for crop stress detection, Journal of Intelligent & Robotic Systems, vol. 99, pp. 205-224, 2020.