Digital Economy as a Factor in the Technological Development of the Mineral Sector

This article describes the impact of the global digital economy on the technological development of the mineral sector in the world. Due to the different specifics of the legislative bases of the investigated regions, such as the USA, China, EU, and Africa, the development of digital transformation is presented on the example of the Russian Federation in the context of world trends. The article presents an analysis of the possibilities of using straight-through digital technology in prospecting, design, development, and use of mineral resources. It describes a structure promoting the development of applied digital technology through research–education centers and international competence centers. This structure would allow forming the new competencies for personnel working in the digital economy. The underfunding of the information and computing infrastructure could be a significant challenge to the digital transformation of the economy. Creating the conditions for a reliable and secure process of generating, storing, and using data is the basis for protection from the cybersecurity hazard that could act as a brake on technology advancement. This article discusses the organizational and technological priorities of the development of the mineral resource sector on the example of the Russian Federation. The challenges for the mineral resource complex resulting from global changes can be taken on through technological changes of the industry. The article gives a thorough description of issues related to technological developments in the raw materials sector, oil refining industry, development of integrated and advanced mineral processing systems, and the use of household and industrial wastes. The research presents basic technology contributing to sustainable development, starting from exploration and production forecasting and up to sustainable planning and distribution of material and energy resources based on real-time data. It also pays special attention to the possibilities of creating digital platforms for the mineral sector. Digital integration, combining research areas, personnel, processes, users, and data will create conditions for scientific and technological achievements and breakthroughs, providing scientific and economic developments in related industries and, above all, in the global mineral and raw materials market.

[1]  M. Ivimey Annual report , 1958, IRE Transactions on Engineering Writing and Speech.

[2]  Judith Gurney BP Statistical Review of World Energy , 1985 .

[3]  Soichi Nishiyama,et al.  Analysis and prediction of flow from local source in a river basin using a Neuro-fuzzy modeling tool. , 2007, Journal of environmental management.

[4]  Carl-Magnus Backman,et al.  Global Supply and Demand of Metals in the Future , 2008, Journal of toxicology and environmental health. Part A.

[5]  Mikael Höök,et al.  Growth Rates of Global Energy Systems and Future Outlooks , 2012, Natural Resources Research.

[6]  Cheng Li China's Emerging Middle Class: Beyond Economic Transformation , 2011, The China Quarterly.

[7]  Kaarle Kupiainen,et al.  Simultaneously Mitigating Near-Term Climate Change and Improving Human Health and Food Security , 2012, Science.

[8]  Saul J. Berman Digital transformation: opportunities to create new business models , 2012 .

[9]  Harald Sverdrup,et al.  Peak Metals, Minerals, Energy, Wealth, Food and Population: Urgent Policy Considerations for a Sustainable Society , 2013 .

[10]  Jason Taylor,et al.  A Framework for Quantitative Assessment of Impacts Related to Energy and Mineral Resource Development , 2014, Natural Resources Research.

[11]  Michael Tennesen Rare earth. , 2014, Science.

[12]  A. Beucher,et al.  Artificial neural network for mapping and characterization of acid sulfate soils: application to Sirppujoki River catchment, southwestern Finland. , 2015 .

[13]  Pooya Soltantabar Annual Energy Outlook , 2015 .

[14]  N. T. Nassar,et al.  Mineral Resources: Reserves, Peak Production and the Future , 2016 .

[15]  Arshdeep Bahga,et al.  Blockchain Platform for Industrial Internet of Things , 2016 .

[16]  Amir Hashempour Charkhi,et al.  Optimization of integrated production system using advanced proxy based models: A new approach , 2016 .

[17]  Michael Devetsikiotis,et al.  Blockchains and Smart Contracts for the Internet of Things , 2016, IEEE Access.

[18]  A. Valero,et al.  Decreasing Ore Grades in Global Metallic Mining: A Theoretical Issue or a Global Reality? , 2016 .

[19]  Amy C. Tolcin,et al.  Global Trends in Mineral Commodities for Advanced Technologies , 2018, Natural Resources Research.

[20]  Yu Peng,et al.  Review on cyber-physical systems , 2017, IEEE/CAA Journal of Automatica Sinica.

[21]  Klaus-Dieter Thoben,et al.  "Industrie 4.0" and Smart Manufacturing - A Review of Research Issues and Application Examples , 2017, Int. J. Autom. Technol..

[22]  Ying-hong Wang,et al.  Multiple Regression-Based Calculation of Iron Ore Resource Royalty Rate and Analytical Study of Its Influencing Factors: Example from Anhui Province of China , 2018, Natural Resources Research.

[23]  J. Benndorf,et al.  Recent Developments in Closed-Loop Approaches for Real-Time Mining and Petroleum Extraction , 2017, Mathematical Geosciences.

[24]  J. Kultan,et al.  Application of electronic learning tools for training of specialists in the field of information technologies for enterprises of mineral resources sector , 2017 .

[25]  A. Tessema,et al.  Mineral Systems Analysis and Artificial Neural Network Modeling of Chromite Prospectivity in the Western Limb of the Bushveld Complex, South Africa , 2017, Natural Resources Research.

[26]  Prabhat,et al.  Artificial Neural Network , 2018, Encyclopedia of GIS.

[27]  Fedor Krasnov,et al.  A Machine Learning Approach to Enhanced Oil Recovery Prediction , 2017, AIST.

[28]  Patrice Christmann,et al.  Towards a More Equitable Use of Mineral Resources , 2018, Natural Resources Research.

[29]  F. Wall,et al.  The Rare Earth Elements: Demand, Global Resources, and Challenges for Resourcing Future Generations , 2018, Natural Resources Research.

[30]  A. Bhattacharya,et al.  Random Forest-Based Prospectivity Modelling of Greenfield Terrains Using Sparse Deposit Data: An Example from the Tanami Region, Western Australia , 2017, Natural Resources Research.

[31]  Bernd Meyer,et al.  Syngas Production: Status and Potential for Implementation in Russian Industry , 2017 .

[32]  Y Zhukovskiy,et al.  Concept of Smart Cyberspace for Smart Grid Implementation , 2018 .

[33]  Daniel F. Spulber The Economics of Markets and Platforms , 2018, Journal of Economics & Management Strategy.

[34]  Páginas preliminares Revista EIA , 2018, Revista EIA.

[35]  Innovation-Based Development of the Mineral Resources Sector: Challenges and Prospects , 2018 .

[36]  Maryam Mokhtari,et al.  Comparison of LLNF, ANN, and COA-ANN Techniques in Modeling the Uniaxial Compressive Strength and Static Young’s Modulus of Limestone of the Dalan Formation , 2018, Natural Resources Research.

[37]  E. Division,et al.  Unconventional Energy Resources: 2017 Review , 2018, Natural Resources Research.

[38]  Andrew Kusiak,et al.  Data-driven smart manufacturing , 2018, Journal of Manufacturing Systems.

[39]  D. Medvedev Russia-2024: the strategy of social and economic development , 2018, Voprosy Ekonomiki.

[40]  P. Renard,et al.  Pilot Point Optimization of Mining Boundaries for Lateritic Metal Deposits: Finding the Trade-off Between Dilution and Ore Loss , 2018, Natural Resources Research.

[41]  A. Månberger,et al.  Global metal flows in the renewable energy transition: Exploring the effects of substitutes, technological mix and development , 2018, Energy Policy.

[42]  Vladimir Shepelev,et al.  Possibility of Digital Twins Technology for Improving Efficiency of the Branded Service System , 2018, 2018 Global Smart Industry Conference (GloSIC).

[43]  S. Ellefmo,et al.  Multi-scale Quantitative Risk Analysis of Seabed Minerals: Principles and Application to Seafloor Massive Sulfide Prospects , 2018, Natural Resources Research.

[44]  Florian Glaser,et al.  Blockchain as a Platform , 2018, Business Transformation through Blockchain.

[46]  Unconventional Energy Resources: 2017 Review , 2018 .

[47]  Behind the Mining Productivity Upswing: Technology-Enabled Transformation , 2018 .

[48]  L. Richardson,et al.  Geographies of digital skill , 2017, Geoforum.

[49]  Wayne F. Cascio,et al.  Training trends: Macro, micro, and policy issues , 2017, Human Resource Management Review.

[50]  Frederik Plewnia,et al.  The Energy System and the Sharing Economy: Interfaces and Overlaps and what to Learn from them , 2019, Energies.

[51]  Global Material Resources Outlook to 2060 , 2019 .

[52]  T. Mukherjee,et al.  A digital twin for rapid qualification of 3D printed metallic components , 2019, Applied Materials Today.

[53]  Jazuli Abdullahi,et al.  Multi-region Modeling of Daily Global Solar Radiation with Artificial Intelligence Ensemble , 2019, Natural Resources Research.

[54]  Dennis M. Steininger Linking information systems and entrepreneurship: A review and agenda for IT‐associated and digital entrepreneurship research , 2018, Inf. Syst. J..

[55]  Digital economy of oil industry , 2019, Neftyanoe khozyaystvo - Oil Industry.

[56]  Mark Graham,et al.  Good Gig, Bad Gig: Autonomy and Algorithmic Control in the Global Gig Economy , 2018, Work, employment & society : a journal of the British Sociological Association.

[57]  H. Gruber Proposals for a digital industrial policy for Europe , 2019, Telecommunications Policy.

[58]  Andrea Thorenz,et al.  Potentials of preparation for reuse: A case study at collection points in the German state of Bavaria , 2019 .