Behavior modelling and sensing for machinery operations using smartphone’s sensor data: A case study of forage maize sowing
Abstract
Keywords: agricultural machinery operation, behavior modeling, smartphone, sensors, case study, forage maize
DOI: 10.25165/j.ijabe.20191206.4702
Citation: Wu C C, Chen Z B, Wang D X, Kou Z H, Cai Y P, Yang W Z. Behavior modelling and sensing for machinery operations using smartphone’s sensor data: a case study of forage maize sowing. Int J Agric & Biol Eng, 2019; 12(6): 66–74.
Keywords
Full Text:
PDFReferences
He P, Li J, Wang X. Wheat harvest schedule model for agricultural machinery cooperatives considering fragmental farmlands. Computers and Electronics in Agriculture, 2018; 145: 226–234.
Li E, Yang M, Cook M L. Agricultural machinery cooperatives in china: Origin, development, and innovation. ASABE Annual International Meeting, Reno, NV, United states, June 21-24, 2009; pp.5835–5853.
Zhang Y, Huang Z H. Identifying risks inherent in farmer cooperatives in China. China Agricultural Economic Review, 2014; 6(2): 335–354. (in
Chinese)
Bochtis D D, Sørensen C G C, Busato P. Advances in agricultural machinery management: A review. Biosystems Engineering, 2014; 126: 69–81.
Stecca G, Baffo I, Galiano G, Clemente F. Design of a holonic remote monitoring and diagnosis system for fleet management. Measurement: Journal of the International Measurement Confederation, 2013; 46(6): 1947–1956.
Orfanou A, Busato P, Bochtis D D, Edwards G, Pavlou D, Sorensen C G, Berruto R. Scheduling for machinery fleets in biomass multiple-field operations. Computers and Electronics in Agriculture, 2013; 94: 12–19.
Lee C J, Kim H J, Ha J W, Cho B J, Choi D S. An isobus-networked electronic self-leveling controller for the front-end loader of an agricultural tractor. Applied Engineering In Agriculture, 2017; 33(6): 757–767.
Al-Aani F S, Darr M J, Covington B R, Powell L J. The performance of farm tractors as reported by can-bus messages. ASABE Annual International Meeting, Orlando, FL, United states, July 17-20, 2016.
Caffaro F, Roccato M, Micheletti Cremasco M, Cavallo E. Falls from agricultural machinery: Risk factors related to work experience, worked hours, and operators behavior. Human Factors, 2018; 60(1): 20–30.
Kou Z H, Wu C C. Smartphone based operating behaviour modelling of agricultural machinery. IFAC-PapersOnLine, 2018; 51(17): 521–525.
Wu C C, Zhou L, Wang J, Cai Y P. Smartphone based precise monitoring method for farm operation. Int J Agric & Biol Eng, 2016; 9(3): 111–121.
Bognatz S R. Transient speed vibration analysis - insights into machinery behavior. 62nd Meeting of the Society for Machinery Failure Prevention Technology, MFPT, Virginia Beach, VA, United States, April 6-8, 2008.
Ignatov A D, Strijov V V. Human activity recognition using quasiperiodic time series collected from a single tri-axial accelerometer. Multimedia Tools and Applications, 2016; 75(12): 7257–7270.
Kwon Y, Kang K, Bae C. Unsupervised learning for human activity recognition using smartphone sensors. Expert Systems with Applications, 2014; 41(14):6067–6074.
Saha J, Chowdhury C, Biswas S. Two phase ensemble classifier for smartphone based human activity recognition independent of hardware configuration and usage behaviour. Microsystem Technologies, 2018; 24(6): 2737–2752.
Hassan M M, Uddin M Z, Mohamed A, Almogren A. A robust human activity recognition system using smartphone sensors and deep learning. Future Generation Computer Systems, 2018; 81: 307–313.
Lee K, Kwan M-P. Physical activity classification in free-living conditions using smartphone accelerometer data and exploration of predicted results. Computers Environment And Urban Systems, 2018; 67: 124–131.
Garcia-Ceja E, Galvan-Tejada C E, Brena R. Multi-view stacking for activity recognition with sound and accelerometer data. Information Fusion, 2018; 40: 45–56.
Vanwye W R, Hoover D L. Management of a patient's gait abnormality using smartphone technology in-clinic for improved qualitative analysis: A case report. Physiotherapy Theory and Practice, 2018; 34(5): 403–410.
Sun R P, Sosnoff J J. Novel sensing technology in fall risk assessment in older adults: a systematic review. Bmc Geriatrics, 2018; 18: 14.
Zokas B, Lukoeviius M, 2018. Human sport activities recognition and registration from portable device, 2018 Symposium for Young Scientists in Technology, Engineering and Mathematics, SYSTEM 2018, CEUR-WS, Gliwice, Poland, May 28, 2018; pp.61–65.
Hemalatha C S, Vaidehi V. Associative classification based human activity recognition and fall detection using accelerometer. International Journal of Intelligent Information Technologies, 2013; 9(3): 20–37.
Castignani G, Derrmann T, Frank R, Engel T. Smartphone-based adaptive driving maneuver detection: A large-scale evaluation study. Ieee Transactions on Intelligent Transportation Systems, 2017; 18(9): 2330–2339.
Castignani G, Derrmann T, Frank R, Engel T. Driver behavior profiling using smartphones: A low-cost platform for driver monitoring. IEEE Intelligent Transportation Systems Magazine, 2015; 7(1): 91–102.
Osafune T, Takahashi T, Kiyama N, Sobue T, Yamaguchi H, Higashino T. Analysis of accident risks from driving behaviors. International Journal of Intelligent Transportation Systems Research, 2017; 15(3): 192–202.
Eren H, Makinist S, Akin E, Yilmaz A. Estimating driving behavior by a smartphone. IEEE Intelligent Vehicles Symposium, IV 2012. Institute of Electrical and Electronics Engineers Inc., Alcal de Henares, Madrid, Spain, June 3-7, 2012; pp.234–239.
Johnson D A, Trivedi M M, 2011. Driving style recognition using a smartphone as a sensor platform, 14th IEEE International Intelligent Transportation Systems Conference, ITSC 2011, October 5, 2011 - October 7, 2011. Institute of Electrical and Electronics Engineers Inc., Washington, DC, United states, pp. 1609–1615.
Craessaerts G, De Baerdemaeker J, Saeys W. Fault diagnostic systems for agricultural machinery. Biosystems Engineering, 2010; 106(1): 26–36.
Son J-D, Ahn B-H, Ha J-M, Choi B-K. An availability of mems-based accelerometers and current sensors in machinery fault diagnosis. Measurement: Journal of the International Measurement Confederation, 2016; 94: 680–691.
Bietresato M, Friso D, Sartori L. Assessment of the efficiency of tractor transmissions using acceleration tests. Biosystems Engineering, 2012; 112(3): 171–180.
Fadloullah I, Mechaqrane A, Ahaitouf A. Butterworth low pass filter design using evolutionary algorithm, 2017 International Conference on Wireless Technologies, Embedded and Intelligent Systems, WITS, April 19-20, 2017. Institute of Electrical and Electronics Engineers Inc., Fez, Morocco.
Copyright (c) 2019 International Journal of Agricultural and Biological Engineering
This work is licensed under a Creative Commons Attribution 4.0 International License.