2017
DOI: 10.3390/pr5040064
|View full text |Cite
|
Sign up to set email alerts
|

How to Generate Economic and Sustainability Reports from Big Data? Qualifications of Process Industry

Abstract: Big Data may introduce new opportunities, and for this reason it has become a mantra among most industries. This paper focuses on examining how to develop cost and sustainable reporting by utilizing Big Data that covers economic values, production volumes, and emission information. We assume strongly that this use supports cleaner production, while at the same time offers more information for revenue and profitability development. We argue that Big Data brings company-wide business benefits if data queries and… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
1
1
1

Citation Types

0
6
0

Year Published

2018
2018
2022
2022

Publication Types

Select...
8

Relationship

2
6

Authors

Journals

citations
Cited by 12 publications
(6 citation statements)
references
References 37 publications
0
6
0
Order By: Relevance
“…In the SPS context, BDA offers opportunities for cost reduction, productivity and sustainability improvement (Hamalainen and Inkinen, 2017), and supporting innovation (Romero et al, 2017). Another critical application of BDA in SPS is related to the measurement, monitoring, and control of workers' operations (Seele, 2016) in enhancing their quality of life.…”
Section: Source: Elaborated By the Authorsmentioning
confidence: 99%
See 1 more Smart Citation
“…In the SPS context, BDA offers opportunities for cost reduction, productivity and sustainability improvement (Hamalainen and Inkinen, 2017), and supporting innovation (Romero et al, 2017). Another critical application of BDA in SPS is related to the measurement, monitoring, and control of workers' operations (Seele, 2016) in enhancing their quality of life.…”
Section: Source: Elaborated By the Authorsmentioning
confidence: 99%
“…et al (2016);Ardito, et al (2018);Baek et al (2015);Bibri (2018);Bibri and Krogstie (2017a);Bibri and Krogstie (2017b);Bologa, et al (2017);Chang and Wills (2016);Chinnaswamy et al (2018);Cottrill and Derrible (2015);Diamantoulakis et al (2015);Dubey et al (2016);Hamalainen and Inkinen (2017);Han et al (2018);He et al (2017);Intezari and Gressel (2017);Kache and Seuring (2017);Kahn and Liu (2015);Khan and Vorley (2017); Liu et al (2017); Louhghalam et al (2017); Luo et al (2017); Mani et al (2017); Matthias et al (2017); Munshi and Mohamed (2017); Nobre and Tavares (2017); Al Nuaimi et al (2015); Pauleen and Wang (2017); Phillips-Wren and Hoskisson (2015); Rehman et al (2016); Romero et al (2017); Rothberg and Erickson (2017); Schuelke-Leech et al (2015); Seele (2016); Suciu et al (2016); Tu et al (2017); Verma and Singh (2017); Wamba et al (2017); Wang et al (2016a); Wang and Byrd (2017); Wu et al (2016); Yuan et al (2017); Zhang et al (2017a); Zhang et al (2017b); Zhou and Yang (2016). Blockchain Christidis and Devetsikiotis (2016); Li et al (2018).…”
mentioning
confidence: 99%
“…So far, within management accounting, the prediction function has been used the most often since estimation is the most common task in managerial accounting application of data mining [42]. AI uses data mining tools to build logic behind the data to forecast future outcomes and identify patterns for allocating impacts to activities [45]. In order to arrive at the true cost estimations, the interplay between discounting, uncertainty, damages, and risk aversion is important to consider [29].…”
Section: Tca Big Data In Coping With Complexitymentioning
confidence: 99%
“…The operational interlinkage in data management is therefore tightly embedded into the level of collaboration intensity and depth. The current development mindset in ports focuses on general improvement of data sharing, storing, and transfer (in the case of big data, see [22]).…”
Section: Open Data and Innovation In Ports And The Maritime Sectormentioning
confidence: 99%