skip to main content

The factors influencing production and economic efficiency of beef cattle farm in Grobogan Region, Central Java

*T. Ekowati  -  Faculty of Animal and Agricultural Sciences, Diponegoro University, Indonesia
E. Prasetyo  -  Faculty of Animal and Agricultural Sciences, Diponegoro University, Indonesia
M. Handayani  -  Faculty of Animal and Agricultural Sciences, Diponegoro University, Indonesia
Open Access Copyright (c) 2018 Journal of the Indonesian Tropical Animal Agriculture under https://creativecommons.org/licenses/by-sa/4.0/.

Citation Format:
Abstract

The study was aimed to analyze the on-farm agribusiness subsystem approach at farm household, to analyze beef cattle production influencing factors and to analyze economic efficiency of beef cattle farm. The method use for research was survey method at Wirosari District and Purwodadi District, Grobogan Regency as research location. Each district was determined two villages to obtain data from respondent. Quota sampling method was use for determination the number of beef cattle farm household without a counting of population as a sampling frame. The number of respondent for each village was 20 farmers, so the total respondent was 80 farmers. Data were analyzed descriptively for on farm sub-system agribusiness approach, multiple linear regression and economic efficiency. The research result showed that the on-farm agribusiness subsystem was on moderate to good condition, the influencing factors of production were breed, forage, concentrate, health, reproduction, labor, year of farming and agribusiness implementation. The value of reproduction efficiency was 8.975 higher than 1, it was not efficient. The efficiency of farm scale, forage, concentrate, health and labor were 0.352; 0.128; 0.0148; 0.0235 and 0.0834 respectively less than 1, and it had not been efficient yet. The conclusion of research was the agribusiness implementation in beef cattle farming was in moderate and good criteria and gave the benefit to farmers. Production factors of farm scale, forage, concentrate, health, reproduction, labor, years of farming and agribusiness implementation were influence to the beef cattle production. The efficiency of farm scale, forage, concentrate, health, and labor on the beef cattle farm were not been efficient yet, while reproduction became an inefficient production factor.

   

Fulltext View|Download
Keywords: on-farm agribusiness; beef cattle; efficiency; farm household

Article Metrics:

Last update:

  1. Gross margin analysis of the biosystem integration of Ettawa crossbred goat and forestry plants in Yogyakarta Indonesia

    Tri Anggraeni Kusumastuti, Bambang Suwignyo. INTERNATIONAL CONFERENCE ON SUSTAINABLE MATERIALS SCIENCE, STRUCTURES, AND MANUFACTURING, 2869 , 2023. doi: 10.1063/5.0165157
  2. Estimation the Cost function in long-run derived from the Cobb Douglas production function and estimating the resources demand function and the output supply function for Calves fattening projects in Baghdad Governorate

    Nahidh Naji Issa, Hassan Thamer Zanzal. Tikrit Journal for Agricultural Sciences, 22 (3), 2022. doi: 10.25130/tjas.22.3.3
  3. The generation interval and season of birth do not affect age at first calving, birth weight and calving interval of Mozambican Angoni cattle

    Leonel António Joaquim, Abílio Paulo Changule, Maria da Glória Taela, Mariana Novela, Sónia Carlitos Pinto, Custódio Gabriel Bila. Tropical Animal Health and Production, 56 (5), 2024. doi: 10.1007/s11250-024-04030-x
  4. An ISM approach for identifying and analyzing the complexity of beef cattle farming problems in Central Java

    I W Pratama, M A U Muzayyanah, A Astuti, I G S Budisatria, A R S Putra. IOP Conference Series: Earth and Environmental Science, 905 (1), 2021. doi: 10.1088/1755-1315/905/1/012133
  5. China’s Claim on Traditional Fishing Grounds Located in the South China Sea

    Intan Novia Putri, Dina Sunyowati, Enny Narwati. Environmental Policy and Law, 50 (3), 2020. doi: 10.3233/EPL-200221
  6. Understanding the decision‐making in small‐scale beef cattle herd management through a mathematical programming model

    Robert Hlavatý, Igor Krejčí, Milan Houška, Pavel Moulis, Jan Rydval, Jana Pitrová, Ladislav Pilař, Tereza Horáková, Ivana Tichá. International Transactions in Operational Research, 30 (4), 2023. doi: 10.1111/itor.13014
  7. Behavioral response of breeder toward development program of Ongole crossbred cattle in Yogyakarta Special Region, Indonesia

    Widodo, Diah Rina Kamardiani, Beti Nur Utami. Open Agriculture, 7 (1), 2022. doi: 10.1515/opag-2022-0076
  8. Evaluation and development strategy of cattle breeding area-based on smallholder farmers community in Jambi

    D A P Sari, Muladno, S Said, Nahrowi, R Priyanto. IOP Conference Series: Earth and Environmental Science, 892 (1), 2021. doi: 10.1088/1755-1315/892/1/012002
  9. Traps and Opportunities of Czech Small-Scale Beef Cattle Farming

    Igor Krejčí, Pavel Moulis, Jana Pitrová, Ivana Tichá, Ladislav Pilař, Jan Rydval. Sustainability, 11 (15), 2019. doi: 10.3390/su11154245

Last update: 2024-11-21 19:39:59

  1. Moniezia, Sp is found inside cow intestines slowing down the growth of the cattle

    Mafruchati M.. Systematic Reviews in Pharmacy, 11 (11), 2020. doi: 10.31838/srp.2020.11.191
  2. Competitiveness of Indonesian beef trading in Asean

    Sutawi S.. Journal of the Indonesian Tropical Animal Agriculture, 44 (2), 2019. doi: 10.14710/jitaa.44.2.213-219
  3. Beef cattle farmers behavior toward biosecurity

    Lestari V.S.. Journal of the Indonesian Tropical Animal Agriculture, 44 (2), 2019. doi: 10.14710/jitaa.44.2.204-212
  4. China's claim on traditional fishing grounds located in the South China Sea

    Putri I.N.. Environmental Policy and Law, 50 (3), 2020. doi: 10.3233/EPL-200221
  5. Analysis in making decision of farmer to select bull frozen semen in Indonesia

    Agustine R.. Journal of the Indonesian Tropical Animal Agriculture, 44 (3), 2019. doi: 10.14710/jitaa.44.3.323-332
  6. Traps and Opportunities of Czech Small-Scale Beef Cattle Farming

    Igor Krejčí, Pavel Moulis, Jana Pitrová, Ivana Tichá, Ladislav Pilař, Jan Rydval. Sustainability, 11 (15), 2019. doi: 10.3390/su11154245
  7. Smallest of maximum to find α-predicate for determiningcattle health conditions

    Kurniawan S.. International Journal of Advanced Trends in Computer Science and Engineering, 9 (5), 2020. doi: 10.30534/ijatcse/2020/192952020