Abstract

Farmers have to finish their harvesting with high efficiency, because of time and cost. However, farmers are lacking knowledge and information required for selecting suitable combine harvesters and giving the conditions of their rice fields, because both information factors (combine harvester and field condition) impact the field capacity. The field capacity model was generated from combine harvesters with the Thai Hom Mali rice variety (KDML-105). Therefore, this study aimed to determine the prediction model for effective field capacity to combine harvesters when harvesting the Thai Hom Mali rice variety (KDML-105). The methods began by collecting data of 15 combine harvesters, such as field, crop, and machine conditions and operating times; to generate the prediction model for the KDML-105 variety. The prediction model was then validated using 12 combine harvesters that were collected similarly to the model creation. The results showed a root mean square error (RMSE) of 0.24 m2/s for the model. The prediction model can be applied for farmers to select the proper combine harvesters and give their field conditions. Keywords: rice harvesting, combine harvester, prediction model, effective field capacity, selection of combine harvester DOI: 10.25165/j.ijabe.20201304.4984 Citation: Doungpueng K, Saengprachatanarug K, Posom J, Chuan-Udom S. Selection of proper combine harvesters to field conditions by an effective field capacity prediction model. Int J Agric & Biol Eng, 2020; 13(4): 125–134.

Highlights

  • Climate change is an issue that warrants study because it is a problem presently damaging agricultural production

  • The activities in situations (4)-(7) happen while the combine harvester is working in the field and are called the total lost time (TL). This TL is separated into the headlands and corners turning lost time (Tn), the traveling for unloading and grain unloading time without harvesting (Tf), and the repair, adjustment, and refueling time during the harvesting (Tm)

  • Equation (26) presents the fundamental prediction model of the effective field capacity (EFC) contained by the theoretical field time (Tth) and the total lost time during harvesting (TL)

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Summary

Introduction

Climate change is an issue that warrants study because it is a problem presently damaging agricultural production. Climate change causes temperature changes, heavy rainstorms, serious drought and severe flooding[1,2], which affect Southeast Asia and countries in the Lower Mekong region such as Cambodia, Laos, Vietnam and Thailand. These countries are heavily impacted by floods during the annual flood season (June-November)[3]. Extreme flooding in Thailand was recorded in 2011, causing a severe disaster that damaged approximately 1.6 million hm of rice production areas (12.5% of the country’s cropland) and a loss of 1.3 billion USD[7,8,9]

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