The impact of COVID-19 pandemic on business risks and potato commercial model

IF 1.8 Q2 AGRICULTURE, MULTIDISCIPLINARY Open Agriculture Pub Date : 2023-01-01 DOI:10.1515/opag-2022-0158
Pujiharto Pujiharto, S. Wahyuni
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Abstract

Abstract This study was aimed (1) to analyze the productivity, cost, and income of potato farming; (2) to analyze the risk of potato farming; and (3) to analyze the potato trade system at the level before and during COVID-19 pandemic. This study used a descriptive-quantitative research type. It was conducted in Banjarnegara Regency, Jawa Tengah Province, Indonesia. The data were collected through surveys, observations, and Focus Group Discussions. The unit of analysis is the farmers who plant potatoes. Data analysis was done descriptively. The results showed that there is no difference between the two marketing channels before and during pandemic. There are two channels of the trading system, namely farmer–collector–traders–wholesaler–exporter partners and farmer–collector–traders–wholesalers–retailers. However, the trading model maximizes the Agribusiness Sub Terminal (AST) as a potato trading agent that can provide direct price information, attract traders, and facilitate transactions and trading contacts. The trading model allows potato trading agents to provide direct price information, attract traders, and facilitate transactions and trading contacts. The implication of this study is to anticipate productivity risk and potato farming income risk through the AST function. This study contributes to the condition of farming before and during COVID-19 pandemic by comparing differences in productivity, costs, income, productivity risk, and income risk as well as the potato grading model.
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COVID-19大流行对商业风险和马铃薯商业模式的影响
摘要本研究旨在(1)分析马铃薯种植的生产力、成本和收入;(2) 分析马铃薯种植的风险;(3)分析新冠肺炎大流行前和大流行期间的马铃薯贸易体系。本研究采用描述性定量研究的方法。它是在印度尼西亚爪哇登加省的Bangarnegara县进行的。数据是通过调查、观察和焦点小组讨论收集的。分析单位是种植土豆的农民。数据分析是描述性的。结果表明,疫情前和疫情期间,这两种营销渠道没有差异。贸易体系有两个渠道,即农民-收集者-贸易商-批发商-出口商合作伙伴和农民-收藏者-贸易商–批发商-零售商。然而,该交易模式最大限度地利用农业综合企业子终端(AST)作为土豆交易代理,可以提供直接的价格信息,吸引贸易商,并促进交易和交易联系。该交易模式允许土豆交易代理提供直接的价格信息,吸引贸易商,并为交易和交易联系提供便利。本研究的意义在于通过AST函数预测生产力风险和马铃薯种植收入风险。这项研究通过比较生产力、成本、收入、生产力风险和收入风险的差异以及马铃薯分级模型,有助于了解新冠肺炎大流行之前和期间的农业状况。
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来源期刊
Open Agriculture
Open Agriculture AGRICULTURE, MULTIDISCIPLINARY-
CiteScore
3.80
自引率
4.30%
发文量
61
审稿时长
9 weeks
期刊介绍: Open Agriculture is an open access journal that publishes original articles reflecting the latest achievements on agro-ecology, soil science, plant science, horticulture, forestry, wood technology, zootechnics and veterinary medicine, entomology, aquaculture, hydrology, food science, agricultural economics, agricultural engineering, climate-based agriculture, amelioration, social sciences in agriculuture, smart farming technologies, farm management.
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