Design of Maize Production and Management Monitoring and Control System Based on Wireless Sensing Data

Article Preview

Abstract:

The low water and nitrogen utilization rates and environmental pollution as a result of the excessive irrigation and fertilization had been paid more and more attention. Adopting the simulation model based on physiological processes to study the optimization method and control technology of agricultural production and management is important to water-saving, rational fertilization and healthy environment. The maize (Zea mays L) is taken as material to explore the integration method of crop simulation with wireless sensing data. First the time scale and temporal scale of wireless sensing data will be unified with simulation step of crop model when the parameters are used as model inputs. Then the relationship between nitrogen balance and soil moisture will be analyze to construct maize production and management monitoring and control system based on wireless sensing data. The system can not only simulate the real-time and dynamic maize growth and development, but also provide the irrigation and fertilization schedule to distribute the annual natural resources depend on the users production goal. The expected forecast results will offer theoretical basis and technological support for intelligent control, water and fertilizer utilization, and management of agricultural production departments.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

126-132

Citation:

Online since:

November 2013

Export:

Price:

[1] N. Wang, N. Zhang and M. Wang, Wireless Sensors in Agriculture and Food industry-Recent Development and Future Perspective. Computers and Electronics in Agriculture, vol. 50 (2006), pp.1-14.

DOI: 10.1016/j.compag.2005.09.003

Google Scholar

[2] J. P. Li, S. Y. Liu and S. X. Wu. A Design of Remote Computer House Monitoring and Control System Based on ZigBee WSN. IJACT: International Journal of Advancements in Computing Technology, AICIT, Vol. 4 (2012), pp.233-240.

Google Scholar

[3] W. Tian and Z. Yang, Alternant Routing of Wireless Sensor Networks Based on Parity of Transport Radius Multiples. Journal of Applied Sciences, Vol. 28 (2010), pp.342-346.

Google Scholar

[4] L. C. Wang and C. X. Ma. Online Clustering and Detective Cost Based Anomaly Detection Scheme for MANET. Computer Science. Vol. 28 (2010), pp.105-108.

Google Scholar

[5] X. H. Dai, Z. Wand and Jiang et al. Survey on lntelligent lnformation Processing in Wireless Sensor Networks. Chinese Journal of Sensors and Actuators. Vol. 19 (2006), pp.1-7.

Google Scholar

[6] Y. Liu and W. Yang. Management for Farmland Environment Monitoring WSN Based on the Internet of Things. Chinese Agricultural Science Bulletin. Vol. (2011), pp.297-302.

Google Scholar

[7] G. L. Luo, C. L. Zhang and Y. D. Xu et al. Real-time Threshold Routing Algorithm Based on Wireless Sensor Network. Journal of Anhui Agricultural Sciences. Vol. 40(2012), pp.4389-4392.

Google Scholar

[8] Y. Q. Song, S. Q. Li and H. B. Wang. Design and Realization of the Distributive Wireless Agricultural Information Gathering System. Research and Exploration in Laboratory. Vol. 28(2009), pp.58-61.

Google Scholar

[9] D. G. Jiang, B. G. Xu and M. S. Wang. Design of Greenhouse Environment Remote Monitoring System Based on GPRS. Guangdong Agricultural Sciences. Vol. 38(2011), pp.160-162.

Google Scholar

[10] Y. B. Shi, L. Zhou and D. B. Xiu et al. Temperature and Humidity Environment Parameter Remote Wireless Monitoring System Based on GSM. Transducer and Microsystem Technologies. Vol. 29(2010), pp.96-98.

Google Scholar

[11] D. H. Park, B. J. Kang and K. R. Cho et al. A Study on Greenhouse Automatic Control System Based on Wireless Sensor Network. Wireless Personal Communications. Vol. 56(2011), pp.117-130.

DOI: 10.1007/s11277-009-9881-2

Google Scholar

[12] A. J. Garcia-Sanchez, Garcia-Sanchez F. and Garcia-Haro J. Wireless Sensor Network Deployment for Integrating Video-surveillance and Data-monitoring in Precision Agriculture over Distributed Crops. Computers and Electronics in Agriculture. Vol. 56(2011).

DOI: 10.1016/j.compag.2010.12.005

Google Scholar

[13] P. C. Nie. Research on Plant Information Perception and Self-organized Agricultural Internet of Things System, PhD Thesis, Zhejiang, Zhejiang Agricultural University, (2012).

Google Scholar

[14] X. M. Du and Y. Chen. The Realization of Greenhouse Controlling System Based on Wireless Sensor Network. Journal of Agricultural Mechanization Research. Vol. 56(2009), pp.141-144.

Google Scholar

[15] J. Panchard. Wireless Sensor Networks for Marginal Farming in India. PhD Thesis. Lausanne, EPFL. (2008).

Google Scholar

[16] M. Damas. Prados A. M. and G´omez F., Olivares G. et al. HidroBus System: Fieldbus for Integrated Management of Extensive Areas of Irrigated Land. Microprocessors Microsyst. Vol. 25(2001), pp.177-184.

DOI: 10.1016/s0141-9331(01)00110-7

Google Scholar

[17] L.S. Guo and Q. Zhang. Wireless Aata Fusion System for Agricultural Vehicle Positioning. Biosystems Engineering. Vol. 91(2005), pp.261-269.

DOI: 10.1016/j.biosystemseng.2005.04.001

Google Scholar

[18] L. Tan. Design of Environment Monitoring System Based on Wireless Sensing Network. Heilongjiang Environmental Journal. Vol. 29(2005), pp.31-32.

Google Scholar

[19] Z. F. Sun, H. T. Cao and H. L. Li, et al. GPRS and WEB Based Data Acquisition System For Greenhouse Environment. Transactions of the CSAE. Vol. 22(2006), pp.131-134.

Google Scholar

[20] H. Liu and M. H. Wang. Development of Farmland Soil Moisture and Temperature Monitoring System Based on Wireless Sensor Network. Journal of Jilin University (Engineering and Technology Edition). Vol. 38(2008), pp.604-608.

Google Scholar

[21] F. Gao, L. Yu and W. A. Zhang et al. Research and Design of Crop Water Status Monitoring System Based on Wireless Sensor Networks. Transactions of the CSAE. Vol. 25(2009), pp.107-112.

Google Scholar

[22] S. M. Xiong, L. M. Wang and X. S. Wang et al. Development of Wireless Sensor Networks in Precision Irrigation System for Crop. Transactions of the CSAE. Vol. 25(2009), pp.143-147.

Google Scholar

[23] A. Baggio. Wireless Sensor Networks in Precision Agriculture. In Workshop on Real-World Wireless Sensor Networks. REALWSN'05, Sweden, (2005).

Google Scholar

[24] J.W. Jones, G. Hoogenboom and C. H. Porter, et al. The DSSAT Cropping System Model. European Journal of Agronomy, Vol. 18(2003), pp.235-265.

DOI: 10.1016/s1161-0301(02)00107-7

Google Scholar

[25] L. Z. Gao and Z. Q. Jin. RCSODS—Rice Cultivation Simulation Optimization Decision System. Application of Computer in Agriculture. (1993), pp.14-20.

Google Scholar

[26] X. B. Pan, X. L. Han and Y. C. Shi. COTGROW: Cotton Growth and Development Simulation Model. Cotton Science. Vol. 8(1996), pp.180-188.

Google Scholar

[27] J. Cao. Study on Precision Crop Management Model and Decision Support System. PhD Thesis. Nanjing, Nanjing Agricultural University, (2008).

Google Scholar

[28] X. P. Wang, G. H. Huang and L. P. Yu et al. Coupled Simulation on Soil-water-nitrogen Transport and Transformation and Crop Growth. Transactions of the CSAE. Vol. 27(2011), pp.19-25.

Google Scholar

[29] Y. Chen, K. L Hu. and L. Feng et al. Optimal Management of Water and Nitrogen for Winter Wheat Based on Simulation Model in Soil-plant system in Agricultural Field. Transactions of the CSAE. Vol. 23(2007), pp.55-59.

Google Scholar

[30] W. R Zhang. Crop Growth Model-based Decision Support System for Green House Cucumber Nitrogen Management, Master's thesis. Nanjing, Nanjing Agricultural University, (2010).

Google Scholar

[31] S. J. Li and Y. P. Zhu, in: Application and Demonstration of Digital Maize Planting and Management System, edited by D. L. Li and Y. Y. Chen, volume 344 of Progress in the IFIP Advances in Information and Communication Technology, AICT , Springer Publisher (2011).

DOI: 10.1007/978-3-642-18333-1_30

Google Scholar