Zhizhou Ren | Agricultural Products | Best Researcher Award

Mr Zhizhou Ren | Agricultural Products |  Best Researcher Award

postgraduate at College of Artificial Intelligence, Nanjing Agricultural University, China

Zhizhou Ren is a postgraduate researcher specializing in smart agriculture and non-destructive detection of agricultural products. His work focuses on integrating hyperspectral imaging, electronic noses, and deep learning for efficient wheat disease detection. He has published two SCI papers in high-impact journals and developed the GFNN model, achieving 98.76% accuracy in disease identification. Ren has contributed to four major collaborative projects and holds one patent. As a member of the China Electronics Society, he actively engages in research that enhances precision agriculture and food security.

Profile:

🔬 Research Focus:

Zhizhou Ren specializes in smart agriculture and non-destructive detection of agricultural products. His research integrates hyperspectral imaging, electronic noses, and deep learning algorithms to detect wheat diseases efficiently.

📚 Key Contributions:

  • Developed the GFNN model for detecting VOCs using an electronic nose, achieving 98.76% accuracy in wheat disease detection.
  • Published two SCI papers in Q1 and Q2 journals, including Agriculture-Basel and International Journal of Agricultural and Biological Engineering.
  • Holds one patent and has contributed to four major collaborative projects funded by Jiangsu Province.

🏆 Achievements & Collaborations:

  • Active member of the China Electronics Society.
  • Engaged in consultancy and industry projects, contributing to agricultural disease management and food security.
  • Participated in prestigious research programs, including the Natural Science Foundation of Jiangsu Province.

Citations:

Citations: 948 (All), 947 (Since 2020)
h-index: 11 (All), 11 (Since 2020)
i10-index: 11 (All), 11 (Since 2020)

Publication Top Notes:

  • QPLEX: Duplex Dueling Multi-Agent Q-Learning
    J. Wang, Z. Ren, T. Liu, Y. Yu, C. Zhang
    Ninth International Conference on Learning Representations (ICLR 2021)550 citations

  • Exploration via Hindsight Goal Generation
    Z. Ren, K. Dong, Y. Zhou, Q. Liu, J. Peng
    Thirty-third Conference on Neural Information Processing Systems (NeurIPS 2019)99 citations

  • Towards Understanding Cooperative Multi-Agent Q-Learning with Value Factorization
    J. Wang, Z. Ren, B. Han, J. Ye, C. Zhang
    Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS 2021)61 citations

  • Proximal Exploration for Model-guided Protein Sequence Design
    Z. Ren, J. Li, F. Ding, Y. Zhou, J. Ma, J. Peng
    Thirty-ninth International Conference on Machine Learning (ICML 2022)47 citations

  • Generalizable Episodic Memory for Deep Reinforcement Learning
    H. Hu, J. Ye, G. Zhu, Z. Ren, C. Zhang
    Thirty-eighth International Conference on Machine Learning (ICML 2021)43 citations

  • Off-Policy Reinforcement Learning with Delayed Rewards
    B. Han, Z. Ren, Z. Wu, Y. Zhou, J. Peng
    Thirty-ninth International Conference on Machine Learning (ICML 2022)41 citations

  • Learning Long-Term Reward Redistribution via Randomized Return Decomposition
    Z. Ren, R. Guo, Y. Zhou, J. Peng
    Tenth International Conference on Learning Representations (ICLR 2022 Spotlight)39 citations

  • On the Estimation Bias in Double Q-Learning
    Z. Ren, G. Zhu, H. Hu, B. Han, J. Chen, C. Zhang
    Thirty-fifth Conference on Neural Information Processing Systems (NeurIPS 2021)24 citations

  • Self-Organized Polynomial-Time Coordination Graphs
    Q. Yang, W. Dong, Z. Ren, J. Wang, T. Wang, C. Zhang
    Thirty-ninth International Conference on Machine Learning (ICML 2022)13 citations

  • Efficient Meta Reinforcement Learning for Preference-based Fast Adaptation
    Z. Ren, A. Liu, Y. Liang, J. Peng, J. Ma
    Thirty-sixth Conference on Neural Information Processing Systems (NeurIPS 2022)12 citations

  • Object-Oriented Dynamics Learning through Multi-Level Abstraction
    G. Zhu, J. Wang, Z. Ren, Z. Lin, C. Zhang
    Thirty-fourth AAAI Conference on Artificial Intelligence (AAAI 2020)11 citations

  • Full-Atom Peptide Design based on Multi-modal Flow Matching
    J. Li, C. Cheng, Z. Wu, R. Guo, S. Luo, Z. Ren, J. Peng, J. Ma
    Forty-first International Conference on Machine Learning (ICML 2024)7 citations

  • Enhancing Protein Mutation Effect Prediction through a Retrieval-Augmented Framework
    R. Guo, R. Wang, R. Wu, Z. Ren, J. Li, S. Luo, Z. Wu, Q. Liu, J. Peng, J. Ma
    Thirty-eighth Conference on Neural Information Processing Systems (NeurIPS 2024)1 citation

  • Bridging Distribution Gaps: Invariant Pattern Discovery for Dynamic Graph Learning
    Y. Jin, M. Wang, Y. Xiong, Z. Ren, C. Huo, F. Zhu, J. Zhang, G. Wang, H. Chen
    World Wide Web 27 (4), 44 (2024)

 

Américo Ferraz Dias Neto | Agricultura Digital | Best Researcher Award

Dr Américo Ferraz Dias Neto |  Agricultura Digital |  Best Researcher Award

Consultor at  Universidade Estadual de Campinas, Brazil

Américo is an Agricultural Engineer with over 20 years of experience in the bioenergy sector, particularly in agroindustrial processes, supply chain optimization, and business strategy. Recognized for his expertise in controlled traffic and digital agriculture, he has successfully led large-scale projects, improving productivity and sustainability. His innovative contributions to bioenergy have earned him notable awards, including the Outstanding Alumnus Award from UNICAMP and the Norman Joseph King Award.

 

Publication Profile

🎓 Education:

  • Ph.D. in Agricultural Engineering, FEAGRI-UNICAMP (2021)
  • M.Sc. in Agricultural Engineering, FEAGRI-UNICAMP (2000)
  • B.Sc. in Agricultural Engineering, FEAGRI-UNICAMP (1997)

🏢 Professional Experience:

  • Américo Ferraz Consult (2017–Present): Bioenergy consulting with clients like Novo Milênio Distillery and Grupo Moreno, focusing on sustainable agricultural production and digital agriculture.
  • UMOE Bioenergy (2017–2020): COO managing a 42,000-hectare unit for ethanol and energy production.
  • Atvos (2007–2016): Agricultural Director, pioneered technologies in remote sensing, precision agriculture, and crop logistics for sugarcane.

🏆 Awards:

  • Norman Joseph King Award, ISSCT Congress, Hyderabad, India (2023)
  • Outstanding Alumnus Award, UNICAMP (2023)

Publication Top Notes

  1. “Advancements of agriculture 4.0 in mechanized sugarcane harvesting: a review”
    Journal: Ciência Rural
    Year: 2024
    DOI: 10.1590/0103-8478cr20220562
    Contributors: Américo Ferraz Neto, Jenyffer da Silva Gomes Santos, Raffaella Rossetto, João Domingos Biagi, Daniel Albiero
  2. “Use of Vegetation Activity Index for Evaluation of L-Alpha Amino Acid Treatment in Sugarcane”
    Journal: Agriculture
    Year: 2024
    DOI: 10.3390/agriculture14111877
    Contributors: Américo Ferraz Dias Neto, Ivan Bazo Bergamim, Flavio Roberto de Freitas Gonçalves, Raffaella Rossetto, Daniel Albiero
  3. “Use of Vegetation Activity Index for Evaluation of L-Alpha Amino Acid Treatment in Sugarcane”
    Type: Preprint
    Year: 2024
    DOI: 10.20944/preprints202409.1603.v1
    Contributors: Américo Ferraz Dias Neto, Ivan Bazo Bergamim, Flavio Roberto de Freitas Gonçalves, Raffaella Rossetto, Daniel Albiero
  4. “Strip Soil Tillage and Traffic Over the Soil on Sugar Cane Compared to Conventional Tillage Systems”
    Journal: Sugar Tech
    Year: 2023
    DOI: 10.1007/s12355-023-01267-y
    Contributors: Américo Ferraz Dias Neto, Daniel Albiero, Raffaella Rossetto, João D. Biagi, Jenyffer Gomes da Silva
  5. “Modeling of Mechanized Sugarcane Harvesting to Support Decision-Making on Asset Management”
    Journal: Sugar Tech
    Year: 2022
    DOI: 10.1007/s12355-022-01126-2
    Contributors: Américo Ferraz Dias Neto, Daniel Albiero, Raffaella Rossetto, João D. Biagi

 

Seyed Bahram Andarzian | Crop Production | Best Researcher Award

Assoc Prof Dr Seyed Bahram Andarzian |  Crop Production |  Best Researcher Award

Researcher at  Agricultural research and Traning Istitute,  Iran

Seyed Bahram Andarzian, PhD, is a prominent researcher and expert in Modeling Crop Eco-physiology at the Research and Training Institute of Agricultural and Natural Resources of Khuzestan in Ahvaz, Iran. With a specialization in computer modeling and simulation of agricultural systems, Dr. Andarzian focuses on the impact of climate change and variability on agricultural production and water resource use. His research interests encompass seasonal forecasting and field management in agro-meteorology, as well as addressing various crop and environmental stresses, including water, heat, cold, and salinity stress. Additionally, he is dedicated to enhancing crop yield and water productivity through effective field management options and is involved in the development of mobile applications for smart agriculture. Dr. Andarzian’s contributions significantly advance sustainable agricultural practices in the region.

Publication profile:

Educational Background 🎓

  • Ph.D. in Agronomy (Crop Eco-physiology), Chamran University, Ahvaz, Iran (2007)
  • M.S. in Agronomy, Chamran University, Ahvaz, Iran (2000)
  • B.S. in Crop Production Engineering, Chamran University, Ahvaz, Iran (1994)
  • Diploma in General Agriculture, Agricultural High School of Rjaei, Ramhoormoz, Iran (1987)

Research Areas 🔬

Dr. Andarzian specializes in:

  • Computer modeling and simulation of agricultural systems
  • The impact of climate change and variability on agricultural production and water resource use
  • Seasonal forecasting and field management
  • Crop and environmental stresses (water, heat, cold, salinity stress)
  • Strategies to increase crop yield and water productivity
  • Development of mobile applications for smart agriculture

Professional Experience 🏢

  • Director, Research and Training Institute of Agricultural and Natural Resources of Khuzestan (2022 – Present)
  • Education and Promotion Deputy, Research and Training Institute of Agricultural and Natural Resources of Khuzestan (2013 – 2022)
  • Head of Research Department, Natural Resources, Research and Training Institute of Agricultural and Natural Resources of Khuzestan (2007 – 2011)
  • Member of the Scientific Board, Research and Training Institute of Agricultural and Natural Resources of Khuzestan (2002 – Present)

Memberships and Contributions 🌍

  • Active member of the International Consortium for Agricultural Systems Applications, University of Georgia, USA
  • Member of the Planning Crop Production Committee, Agricultural Organization of Khuzestan, Iran
  • Advisor for agricultural development and water use planning projects in Khuzestan Province

Dr. Andarzian’s extensive experience and dedication to advancing agricultural science significantly contribute to enhancing crop production and sustainable agricultural practices in Iran.

Citations:

Citations: 327
Documents: 315
h-index: 5

 

Publication Top Notes:

  • Improving Irrigation Scheduling of Wheat to Increase Water Productivity in Shallow Groundwater Conditions Using AquaCrop
    Goosheh, M., Pazira, E., Gholami, A., Andarzian, B., & Panahpour, E.
    Irrigation and Drainage, 2018, 67(5), pp. 738–754. Citations: 16
  • Quantifying the Germination Response of Spring Canola (Brassica napus L.) to Temperature
    Derakhshan, A., Bakhshandeh, A., Siadat, S.A.-A., Moradi-Telavat, M.-R., & Andarzian, S.B.
    Industrial Crops and Products, 2018, 122, pp. 195–201. Citations: 21
  • Determining Optimum Sowing Date of Wheat Using CSM-CERES-Wheat Model
    Andarzian, B., Hoogenboom, G., Bannayan, M., Shirali, M., & Andarzian, B.
    Journal of the Saudi Society of Agricultural Sciences, 2015, 14(2), pp. 189–199. Citations: 62
  • Validation and Testing of the AquaCrop Model Under Full and Deficit Irrigated Wheat Production in Iran
    Andarzian, B., Bannayan, M., Steduto, P., Barati, M.A., & Rahnama, A.
    Agricultural Water Management, 2011, 100(1), pp. 1–8. Citations: 205
  • Simulating the Effects of Planting Date and Nitrogen Fertilizer on Yield and Phenological Stages of Maize Cultivar SC-604 Under Climatic Conditions of South-Western Iran Using CERES-Maize Model
    Delfieh, M., Meskarbashi, M., Andarzian, B., & Farhoudi, R.