Models of Formation of Reliability of Supply Chains for the Supply of Agricultural Products

Oleg Zagurskiy

Department Transport Technologies and Facilities in the Agroindustrial Complex, National University of Life and Environmental Sciences of Ukraine, Kyiv, Ukraine

Wojciech Duczmal

Department of Management AAS-AMA in Opole, The Academy of Applied Science –Academy of Management and Administration in Opole (AAS-AMA in Opole), Opolе, Poland

Liliya Savchenko

Department Transport Technologies and Facilities in the Agroindustrial Complex, National University of Life and Environmental Sciences of Ukraine, Kyiv, Ukraine

Mykola Ohiienko

Department of Management AAS-AMA in Opole, The Academy of Applied Science –Academy of Management and Administration in Opole (AAS-AMA in Opole), Opolе, Poland

DOI: https://doi.org/10.36956/rwae.v5i3.1123

Received: 8 June 2024; Received in revised form: 15 July 2024; Accepted: 19 July 2024; Published: 22 August 2024

Copyright © 2024 Oleg Zagurskiy, Wojciech Duczmal, Liliya Savchenko, Mykola Ohiienko. Published by Nan Yang Academy of Sciences Pte. Ltd.

Creative Commons LicenseThis is an open access article under the Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0) License.


Abstract

The newest stage of economic development, which experts call the "economy of interactions", is associated with the spread of network structures and organizations, the effective operation of which requires a new quality of interaction and management. Multi-channel network supply chains are functionally and organizationally more advanced, meet the requirements of the modern market as much as possible, and allow you to form an adequate product offer in the network of relevant supply and sales channels. However, the more complex the structure of the supply chain, the higher the degree of its internal connectivity and interdependence, and the more it is exposed to uncontrollable events and, accordingly, failures or rejections. The ramifications and complexity of agricultural products supply chain increase attention to their reliability and the need to develop new methods and models for maintaining and ensuring the necessary level of reliability of the supply chain of agricultural products, especially in today's difficult geopolitical conditions. The article discusses approaches to the formation of a multi-level model of structural reliability of the supply chain. It proposes a scheme for its assessment, which quantitatively describes the state of stability of the supply chain in the event of the spread of failures and rejections. An outsourcing planning model has been studied, in which the task of forming a supply chain food turns into the task of selecting channels with the lowest costs, provided that the requirements for reliability are met. The calculations show that multi-channel (network) supply chains for agricultural products with backup channels provide increased reliability, stability, and recoverability. A series-parallel model of structural reliability has been proposed, which ensures the flexibility of the supply chain with given reliability due to the possibility of regulating the volume of supplies by channels.

Keywords: Uptime; Channel; Supply chain; Reliability; Network; Redundant element


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