Maintenance Digitalization

ABSTRACT
Changing market demands are dictating the latest
technological evolutions. Digital Transformation,
Maintenance Optimization and Changing Workforce are
only some of the key industry challenges.
Conventionally, plant operation systems aim to improve
production efficiency and product quality while facility
maintenance systems aim to both maximize operational
efficiency and minimize costs. However, when maximizing
production efficiency, maintenance costs are not necessarily
optimized. Although, operation information and
maintenance information must be combined to maximize
profits for the entire plant, this is rarely achieved mainly
because maintenance is not always quantified.
Many digital technologies can be applied to improve
maintenance, monitoring and visualizing the condition of
equipment, utilizing wireless sensors is the first step to make
the plant maintenance more efficient. The combination
with Advanced Analytics such as Artificial Intelligence
and Machine Learning are strong tools for reforming plant
maintenance work. Data Analytics allow you to understand
equipment conditions more deeply by analyzing process
data creating value from process historian Big Data by
classifying, standardizing, organizing and interpreting
process data accumulated in a plant (big data). The Digital
Transformation can be also applied to field activities in a
process plant, such as operator rounds, basic equipment care
and Predictive Maintenance. It is known that by digitalizing
field activities, plant maintenance can reduce maintenance
costs while reducing the use of paper, check worker’s activity
with location data and time, avoid Over-Maintenance and
assure the efficiency and integrity of field work (less mistakes
and data for procedure analysis). New AR technologies are
enabling field operators to improve maintenance efficiency
and the quality of field work by providing communication
solutions through standard web browsers, where specialists
can make video calls to transmit easy-to-visualize image
and text data, helping less-experienced operators anywhere,
reducing human error and improving the safety and
efficiency of field work.
Keywords: Digital Transformation, Advanced Analytics,
Artificial Intelligence, Predictive Maintenance and Over-
Maintenance.

Author: Eduardo Ishikawa1,
Eduardo Ishikawa¹
1 Yokogawa. Brazil

Corresponding author: Eduardo Ishikawa. Yokogawa. Alameda Xingu, 850. Barueri, SP, Brazil – 06455-030. Phone: +55-11-3513-1419.

O PAPEL vol. 82, num. 1, pp. 70 – 72 – JAN 2021

Últimas Notícias

Irani anuncia duas novas plantas de embalagens

Com Plataforma Neos, companhia mira dobrar market share em papelão ondulado, de 4% para 8%, apoiada em proteínas, e-commerce e embalagens sustentáveis

Suprema Corte dos EUA derruba tarifas recíprocas de Trump e impõe limites ao uso de poderes emergenciais na política comercial

Decisão retira sobretaxas aplicadas ao Brasil sob a IEEPA, mas mantém tarifas baseadas em outros instrumentos legais.

Acordo UE–Mercosul abre nova janela comercial para celulose, papel e madeira

Com o acordo, o setor ganha previsibilidade tarifária e ambiente institucional mais estruturado para acessar o mercado europeu, em meio à reconfiguração do comércio internacional.

Branded Contents

Swan do Brasil destaca inovação e confiabilidade em instrumentação analítica para o setor de celulose e papel

A instrumentação analítica Swan contribui diretamente para a otimização de processos

Fiedler Automação Industrial apoia projeto na Klabin e contribui para redução de 52% na perda de vapor em Telêmaco Borba (PR) 

Iniciativa na Unidade Monte Alegre da Klabin envolveu inspeções na rede de vapor e aplicação de soluções integradas para ganho de eficiência

Compartilhar

Newsletter

Mantenha-se Atualizado!

Assine nossa newsletter gratuita e receba com exclusividade notícias e novidades