Person:
Llivisaca Villazhañay, Juan Carlos

Loading...
Profile Picture

Email Address

Birth Date

1987-03-05

ORCID

0000-0003-2154-3277

Scopus Author ID

57212004129

Web of Science ResearcherID

Afiliación

Universidad de Cuenca, Cuenca, Ecuador
Universidad de Cuenca, Facultad de Ciencias Químicas, Cuenca, Ecuador
Universidad Politécnica Estatal del Carchi, Tulcán, Ecuador
Universidad de Valladolid, Valladolid, España

País

Ecuador

Research Projects

Organizational Units

Organizational Unit
Facultad de Ciencias Químicas
Fundada en 1955 como la Escuela de Química Industrial, la facultad ha sido un pilar fundamental en la formación de profesionales altamente capacitados, comprometidos con el desarrollo de la ciencia, la educación y el bienestar social. La Facultad de Ciencias Químicas pone a consideración su trabajo académico, investigativo y de vinculación con la sociedad, desarrollado a través de la práctica de una docencia de calidad, investigación e innovación en su área de estudio. Desde su oficio de conocimiento se permite contribuir a la sociedad con cuatro carreras: Bioquímica y Farmacia, Ingeniería Química, Ingeniería Ambiental e Ingeniería Industrial. Su carta de presentación en la Academia, la coloca como una dependencia dinámica, donde confluye la solidez de una trayectoria de más de sesenta años. Aquí se trabaja en una continua formación de pregrado y posgrado de la más alta calidad, mediante la mejora continua con la innovación y a la vanguardia de las ciencias químicas.

Job Title

Profesor (T)
Coordinador de Investigación del grupo IMAGINE

Last Name

Llivisaca Villazhañay

First Name

Juan Carlos

Name

Search Results

Now showing 1 - 10 of 13
  • Publication
    A model for implementing enterprise resource planning systems in small and medium-sized enterprises
    (Science and Technology Publications, 2021) Tapia Cárdenas, Daniela Estefania; Vintimilla Álvarez, Paola Fernanda; Álvarez Palomeque, Lourdes Ximena; Llivisaca Villazhañay, Juan Carlos; Peña Ortega, Mario Patricio; Guamán Guachichullca, Noé Rodrigo; Sigüenza Guzmán, Lorena Catalina; Jadán Avilés, Diana Carolina; Vintimilla Álvarez, Paola Fernanda
    Small and medium-sized enterprises (SMEs) are considered dynamic agents within the business environment. Currently, SMEs have great potential for strong growth and great profit. However, their growth is restricted by the lack of systems that would allow integrating their data and activities. One possible solution is the implementation of Enterprise Resource Planning (ERP) systems to increase the company’s level of efficiency, effectiveness, and productivity. However, implementation processes require investing resources and bring certain problems, e.g., the difficulty to fully adapt to the organization’s accounting and management procedures, and lack of experience of end-users in handling ERP systems. The aim of this study is focused on constructing a model for successfully implementing ERP systems into SMEs. This model used a group of critical success factors (CSF) to analyze empirical evidence in organizations. To its development, the interpretive structural modeling methodology was used, and it was validated in a focus group of experts in implementing and using ERP systems. The results show that the model is adequate for a successful implementation in SMEs engaged in sales, production, or service activities.
  • Publication
    Assessment of supply chain performance in an assembly company: evaluation of evolutionary algorithms
    (Springer, Singapore, 2020) Orellana Ordoñez, Josselin Jimena; Peña Ortega, Mario Patricio; Llivisaca Villazhañay, Juan Carlos
    In current globalized markets, companies no longer compete with each other. They now compete with the supply chains (SC) to which they belong. SC optimization allows efficient and effective management of resources. In many cases, optimization goals can conflict with one another. Therefore, the purpose of this work was to evaluate SC performance by comparing three optimization algorithms in a case study with multiple objectives. Two objectives are maximizing profit and maximizing the level of customer service. Also, the modeled problem considers multiple products and periods for two security inventory scenarios (maximum and minimum inventory levels). Evolutionary algorithms were compared: NSGA-II, MOPSO, and MOMA. The NSGA-II algorithm obtained the best result. With a minimum inventory level, NSGA-II presented 97.87% service level and the best benefit. Results show the importance of SC management and its optimization as well as some relevant variables to be considered.
  • Publication
    An overview of optimization models and technological trends of logistics in the retail sector
    (Springer Science and Business Media Deutschland GmbH, 2022) Peña Ortega, Mario Patricio; Jadán Avilés, Diana Carolina; Sigüenza Guzmán, Lorena Catalina; Guamán Guachichullca, Noé Rodrigo; Arcentales Carrión, Rodrigo Nicanor; Llivisaca Villazhañay, Juan Carlos
    Recently, the e-commerce market has grown rapidly. For example, e-commerce generated sales of USD 504 billion in the US from January 1, 2020, to July 1, 2020, representing an increase of 11.58% over the same period in 2019. This growth has forced the retail industry has had to adopt strategies to become more efficient. About 40% of many companies ‘available time is devoted to logistics. Because these activities are consuming a disproportionate share of many companies’ time, logistics is a prime topic of interest. In this context, this study aims to present an overview of optimization models and technological trends in logistics in the retail sector. Findings show that retail logistics has focused on reducing costs, time usage, and inventories while increasing transport capacity. Optimization in logistics has focused on using mathematical algorithms such as genetic algorithms with different variants, and simulation has supported testing optimization proposals. Finally, big data, omnichannel, and e-commerce continue to grow, especially in the retail sector where it has grown considerably
  • Publication
    Optimization models used in the textile sector: a systematic review
    (Springer Science and Business Media Deutschland GmbH, 2022) Llivisaca Villazhañay, Juan Carlos; Veintimilla Reyes, Jaime Eduardo; Sigüenza Guzmán, Lorena Catalina; Torres Torres, Christian Marcelo; Toledo Illescas, María Belén; Peña Ortega, Mario Patricio
    In recent years, several works have been published dedicated to obtaining optimization models. Many of them have been applied in the textile sector because they are part of the economic development areas of a country. This article’s main objective is to review the literature published on optimization models and understand what methods their authors used to solve the optimization problems in the textile sector. A systematic methodology was applied to select research questions, digital databases, and search terms to utilize practical and methodological filters later to carry out this systematic review. This procedure allowed performing a review and synthesis of the results obtained on the optimization models. It was found that the models resulting from the systematic review vary depending on the areas to be optimized. The most frequent applications were logistics and production, followed by cost minimization. They were optimized mainly with linear programming, integer programming, Markov chains, genetic algorithms, and multi-objective programming
  • Publication
    Key performance indicators for the supply chain in small and medium sized enterprises based on balance score card
    (2020) Llivisaca Villazhañay, Juan Carlos; Jadán Avilés, Diana Carolina; Guamán Guachichullca, Noé Rodrigo; Arcentales Carrión, Rodrigo Nicanor; Peña Ortega, Mario Patricio; Sigüenza Guzmán, Lorena Catalina
    A supply chain is a network of interaction between different actors, and indi-cators govern its behavior. The current research deals with the analysis and ranking of critical indicators for the supply chain in small and medium-sized enterprises (SMEs). To this end, firstly, a systematic review of supply chain management indicators for SMEs was carried out. Using data sources such as Scopus, ProQuest, and Google Scholar, 189 metrics were selected. Then, through practical and methodological filters, this number was reduced to 149. To organize these indicators, both models, the Balanced Scorecard (BSC) and the Supply Chain Operations Reference (SCOR-model), were used to connect company strategies to their performance. Secondly, these measures formed part of a questionnaire answered by 30 SME experts. From their responses, critical indicators were evaluated through Principal Component Analysis (PCA), resulting in 50 key indicators. Finally, these indicators were ranked using the Technique for Order Preference by Similarity to Ideal Solution (TOPSIS). For SCM in SMEs, findings indicate that the primary key perfor-mance indicators (KPIs) are cash flow, satisfaction rate, inventory rotation, and exchange of information through the supply chain.
  • Publication
    Relevant factors in the inventory record inaccuracy for retail companies: a study in food retail industry
    (Springer Science and Business Media Deutschland GmbH, 2022) Espinoza Aguirre, Jorge Andrés; Jadán Avilés, Diana Carolina; Peña Ortega, Mario Patricio; Llivisaca Villazhañay, Juan Carlos
    Retail companies are an essential industry for economic development in every country. In these organizations, at least 60% of the assets correspond to inventory. Therefore, inventory record inaccuracy (IRI) is a problem among these companies. IRI is the gap generated between physical audits and system records, which affects the retailer by changing their book value, increasing economic losses, and providing poor customer service. This study aims to identify the factors that cause IRI in retail companies and, using a mathematical model, works to help retailers minimize the gap between registers. As a consequence, retailers can reduce potential losses in the company. Two mathematical models are proposed for each of the dependent variables: IRI and difference between records. The independent variables considered are quantity of sale of an item, cost, physical audit period, variety of products, product returns, sale price, and quantity sold. This work concludes by comparing both models, highlighting the most influential variables
  • Publication
    Optimization of motorcycle assembly processes based on lean manufacturing tools
    (Springer, 2020) Quezada Cazorla, Jonnathan David; Sigüenza Guzmán, Lorena Catalina; Llivisaca Villazhañay, Juan Carlos
    Global competition and economic dynamism force the assembly industry to look for productive philosophies of improvement, optimizing processes, and resources. The challenge in the optimization process involves finding tools that will grant an optimal process. This article proposes a process optimization through the application of Lean Manufacturing tools, with the necessary guidelines analyzed and verified by computational simulation in a motorcycle assembler. Firstly, applying a plant distribution, together with the change of productive system, allowed the reduction of distances, elimination of unnecessary movements, and reprocessing. Then, Pull System reduced the stock of both the product in process and the final product in the warehouse, avoiding the generation of future waste and expenses due to overproduction. Finally, the use of the 5S tool entailed maintaining order and cleanliness inside the plant to facilitate the management of internal resources. In the study reported, an average reduction of 40% in assembly time and an average increase in production of 30% of all motorcycle models that were part of the study are achieved.
  • Publication
    Customer Segmentation in Food Retail Sector: An Approach from Customer Behavior and Product Association Rules
    (Springer, 2022) Llivisaca Villazhañay, Juan Carlos; Aviles Gonzalez, Jonnatan Fernando; Llivisaca Villazhañay, Juan Carlos
    In competitive markets, customer segmentation improves customer loyalty and business performance, but in practice, these analyses are carried out using simple relationships in dashboard, or Microsoft Excel’ sheets, which do not show customer behavior. Data segmentation in the era of big data has changed this paradigm with some techniques that try to decrease bias. In this research, four segmentation techniques are tested with a large set of data from a retail store. CLARA (Clustering Large Applications Algorithm) and Random Forest algorithms both were the best. Through the RFM (Recency, Frequency, Monetary) approach, eight customer segments were found, where Champions customers spend more money and return frequently to the retail store. In addition, each segment of customer buys following a model, this was demonstrated with the a priori algorithm. Finally, some strategies are given into which products should go together and how to distribute them so that customers can find them, as well as the best-selling products.
  • Publication
    Blockchain and its potential applications in food supply chain management in Ecuador
    (Springer, 2020) Peña Ortega, Mario Patricio; Llivisaca Villazhañay, Juan Carlos; Sigüenza Guzmán, Lorena Catalina
    In recent years, attention has been directed to the problem of food loss and waste. On the one hand, there is an increasing demand for higher quality fresh produce and products. On the other hand, studies suggest that at least one-third of food production is lost along its supply chain. The most crucial part is constituted by suppliers-retailers-consumers, since it presents the highest percentages of loss or waste. Several works in the literature suggest that the exchange of information is one of the most important means to reduce waste. Shared information can improve decisions regarding the quantity in supplier’s orders and vendor’s inventory allocation among retailers. Based on these needs, the Blockchain technology, developed in recent years to generate secure transactions on different sectors, has the characteristics of decentralization, information security, and reliability. If this technology can be applied as an underlying basis of a supply chain, it could improve exchanges of information and products among all parts of the system. In this context, the current article presents a systematic review on Blockchain in food supply chain management (FSCM) in Ecuador, its main contributions, and potential benefits. Findings indicate that Blockchain in FSCM is a recent research area whose importance is rapidly growing. However, little is known about Ecuadorian studies applying Blockchain. Additionally, no studies have reported the combination of Blockchain and Internet of Things technologies, one of the most prominent and complementary applications of Blockchain.
  • Publication
    Optimization of Assembly Processes Based on Lean Manufacturing Tools. Case Studies: Television and Printed Circuit Boards (PCB) Assemblers
    (ICAT, 2020) Cuesta Chaca, Silvana Alexandra; Sigüenza Guzmán, Lorena Catalina; Llivisaca Villazhañay, Juan Carlos
    In the current global context, where competition is growing, it is necessary to change the ways how companies operate, eliminating waste through the implementation of optimization tools such as the ones included in the Lean Manufacturing (LM) philosophy. LM is defined as a systematic process of waste elimination, which achieves a sustained rate of improvement over time. This research describes an optimization proposal with LM tools, performing an analysis of the processes’ state of two companies focused on the assembly of televisions and Printed Circuit Boards (PCB) for televisions, respectively. Through Value Stream Mapping (VSM), it was possible to identify problems in the production processes within the two case studies. Regarding televisions, the use of various tools such as 5S and Workloads led to the elimination of one workstation, projecting an increase of almost 5% of the units produced in the assembly capacity of the plant. In the case of PCBs, the distances traveled by operators was reduced with the use of plant distribution strategies and the creation of a supermarket to supply post-assembly activities. These actions allowed the company to reduce 35% in traveled distances and increase 3.69% in the number of produced units. Validation of the optimization proposal was done through computer simulations using a process modeling software.