Rice Yield Forecasting Using Hybrid Quantum Deep Learning Model

Author:

Setiadi De Rosal Ignatius Moses1ORCID,Susanto Ajib1ORCID,Nugroho Kristiawan2,Muslikh Ahmad Rofiqul3ORCID,Ojugo Arnold Adimabua4ORCID,Gan Hong-Seng5

Affiliation:

1. Department Informatic Engineering, Faculty of Computer Science, Dian Nuswantoro University, Semarang 50131, Central Java, Indonesia

2. Department of Information Technology and Industry, Stikubank University, Semarang 50249, Central Java, Indonesia

3. Faculty of Information Technology, University of Merdeka, Malang 65147, East Java, Indonesia

4. Department of Computer Science, Federal University of Petroleum Resources, Effurun, Warri 330102, Delta State, Nigeria

5. School of AI and Advanced Computing, XJTLU Entrepreneur College (Taicang), Xi’an Jiaotong-Liverpool University, Suzhou 215400, China

Abstract

In recent advancements in agricultural technology, quantum mechanics and deep learning integration have shown promising potential to revolutionize rice yield forecasting methods. This research introduces a novel Hybrid Quantum Deep Learning model that leverages the intricate processing capabilities of quantum computing combined with the robust pattern recognition prowess of deep learning algorithms such as Extreme Gradient Boosting (XGBoost) and Bidirectional Long Short-Term Memory (Bi-LSTM). Bi-LSTM networks are used for temporal feature extraction and quantum circuits for quantum feature processing. Quantum circuits leverage quantum superposition and entanglement to enhance data representation by capturing intricate feature interactions. These enriched quantum features are combined with the temporal features extracted by Bi-LSTM and fed into an XGBoost regressor. By synthesizing quantum feature processing and classical machine learning techniques, our model aims to improve prediction accuracy significantly. Based on measurements of mean square error (MSE), the coefficient of determination (R2), and mean average error (MAE), the results are 1.191621 × 10−5, 0.999929482, and 0.001392724, respectively. This value is so close to perfect that it helps make essential decisions in global agricultural planning and management.

Funder

Future Techno Science Foundation, Indonesia

Publisher

MDPI AG

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