Article of the Month - September 2022
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		Proposed 4.0 Industrial Management System for 
		daily operations that poses point cloud assets with annotated real-time 
		sensory measurements and utilizes unsupervised alert logic 
		Ion Anastasios KAROLOS, Stylianos BITHARIS, 
		Vasileios TSIOUKAS, Christos PIKRIDAS, Sotirios KONTOGIANNIS, Theodosios 
		GKAMAS, Nikolaos ZINAS, Greece 
		
		
			
				
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				| Ion Anastasios 
				Karolos | 
				Stylianos Bitharis | 
				Vasileios Tsioukas | 
				Christos Pikridas | 
			
		
		
			
			 
		
			
				
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				| Sotirios 
				Kontogiannis | 
				Theodosios Gkamas | 
				Nikolaos Zinas | 
			
		
		
			
			 
		
			
			This article in .pdf-format 
			(24 pages)
			
		
						SUMMARY
		The safety and enforcement of preventive maintenance procedures 
		specifically for equipment in large industrial infrastructures is a 
		matter of major importance in the Oil and Gas industry. Historically, 
		industrial maintenance operations were executed only when strictly 
		necessary. However, in industrial manufacturing environments, 
		maintenance processes are stochastic, dynamic, and complex. Nowadays, 
		the maintenance paradigm is changing, and industrial maintenance is now 
		understood as a strategic factor and a profit contributor to ensuring 
		productivity in industrial systems. An important parameter to satisfy 
		this point is the production of digital twins, which can be derived 
		through an accurate and detailed survey. This paper presents a holistic 
		industry 4.0 solution towards industrial maintenance. The study focuses 
		on the oil refinery industry and presents their proposed maintenance 
		system architecture, system implementation, technical and basic 
		functional characteristics. The current study took place at Hellenic 
		Petroleum facilities in Northern Greece. 
		1. INTRODUCTION
		Daily management, or daily huddle, has been successfully used by many 
		companies such as the oil and gas industry for their planning and 
		follow-up of the daily operations. In addition, the methodology is often 
		used in parts of the organization, company, or Industry. By visualizing 
		work-hour plans of specific machines and having daily short meetings, a 
		maintenance plan can be created and assigned, solving problems directly 
		and steering the operations to be performed. 
		Traditional Industrial processes focus only on automation and 
		isolated per machinery data collection. SCADA/DCS systems were the first 
		critical step for process automation. In addition, the 4.0 roadmap 
		enforces the use of centralized cloud storage of Industrial information 
		and cloud computing processes, including data mining and machine 
		learning algorithms. These processes will include all Industrial assets 
		assisted by cloud-connected sensors and IIoT as well as Cyber-Physical 
		Systems and 3D representations of physical objects called assets 
		(Lampropoulos et. al., 2019).
		Industrial IoT and machine learning focused on failure detection in 
		production lines can be achieved by utilizing IoT concentrators for 
		issuing real-time alerts and propagating sensory measurements, and using 
		MQTT brokers over Industrial wireless communication technologies 
		(Silvestri et. al., 2020), such as NBIoT, LTE, Industrial Wi-Fi, and 
		LoRa (Nurelmadina et. al., 2021). Furthermore, the IoT integration can 
		offer important features that can be exploited by machine learning 
		algorithms included in orchestration frameworks similar to the one 
		proposed by (Carvajal et. al., 2019).
		Following this trend, Augmented Reality processes have also been 
		proposed to be incorporated as parts of the industrial maintenance and 
		training processes using mobile phone applications (De Pace et. al, 
		2018) and the utilization of optical see-through devices (Pierdicca 
		et.al., 2017). Such initiatives trigger the necessity of virtual 
		objects, the encapsulation of such objects with sensory measurements, as 
		well as the interoperability of such objects with management operations 
		directly provided from the field.
		The increasing use of the Internet of Things (IoT) in factories, and the 
		AR advancements, where assets are connected to the Internet and extend 
		their use via the development of features, eventually leads to the use 
		of Virtual Reality (VR) for Industrial processes and machinery 
		maintenance training. Virtual Reality headsets provide an additional 
		capability for basic training recruits and Industrial problems 
		visualization and simulation (Liagkou et.al., 2019).
		Nevertheless, significant challenges are still lying ahead, such as 
		security and privacy, data heterogeneity, management of smart processes 
		for optimal decisions, and standardization  (Sanchez et. al, 2020). 
		This paper uses as digital objects terrestrial 3D laser scanner surveys 
		which took place at the Hellenic Petroleum facilities in Northern 
		Greece. Digitizing the complex installations, with the use of IoT and 
		cloud facility management processes, the Industry can increase the 
		performance of the daily industrial management by adding digital 
		features in 3D objects, like real-time indicators, pressure, 
		temperature, and vibrations of a pump or compressor. Furthermore, the 
		authors' proposed framework and system architecture, including the 
		processes for Industrial maintenance, focusing on Oil industry 
		infrastructures and assets, is presented.
		2.    RELATED WORK ON POINT CLOUD - GIS 
		SERVICES AS PARTS OF INDUSTRIAL SYSTEMS FOR PERSONNEL OR ASSETS 
		
		Usually, all studies so far have kept "close" proprietary files and 
		have been done using desktop tools easily leveraged to deceive an 
		unsuspecting public. Therefore, the authors used a web tool for viewing 
		the 3D survey in this study. Web service is a quick and easy way to 
		share your point cloud data with anyone, regardless of their familiarity 
		with 3D models. In addition, some of its features include distance & 
		area measurements, height profiles, clip volumes, various point 
		rendering qualities (square, circle, interpolation, splats), and 
		different types of materials or characteristics. For that reason, the 
		Potree Webtool (TU Wien, 2016, Schuetz, 2016, Carey et al., 2021) has 
		been chosen. Potree is a free and open-source webGL based viewer for 
		large point clouds, e.g., 20 billion and more. It is based on the TU 
		Wien Scanopy project and several other research projects. Some of its 
		features include distance & area measurements, height profiles, clip 
		volumes, various point rendering qualities (square, circle, 
		interpolation, splats), and different materials. The figure illustrates 
		a screenshot from the Potree environment of a Continuous Catalytic 
		Reforming (CCR) unit with the basic associated tools. 
		
			
				
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		Figure 1. 3D point cloud view of a CCR unit using 
		Potree environment
		3.    INDUSTRIAL MAINTENANCE SYSTEM HIGH-LEVEL ARCHITECTURE 
		Industrial maintenance has evolved significantly towards digital 
		transformation over the last few years. Historically, industrial 
		maintenance operations were executed only when strictly necessary. 
		However, in industrial manufacturing environments, maintenance processes 
		are stochastic, dynamic, and chaotic. Industrial Maintenance processes 
		are crucial issues that ensure production efficiency since unexpected 
		disturbances lead to the loss of productivity. Therefore, maintenance 
		acts mainly as reactive and preventive to avoid production disruption, 
		being the predictive strategy only applied for critical situations. 
		Traditionally, maintenance strategies do not consider the huge amount 
		of data generated and the available emergent Information and 
		Communications Technology (ICT), e.g., Internet of Things (IoT), Big 
		data, advanced data analytics, cloud computing, and augmented reality. 
		However, the maintenance paradigm is changing, and industrial 
		maintenance is now understood as a strategic factor and a profit 
		contributor to ensuring productivity in industrial systems (Faccio et 
		al., 2014). Furthermore, Industry scaled sensory data generation 
		requires a different schemaless storage approach, different from the 
		existing relational database solutions used by Industrial Management 
		systems (Asiminidis et al., 2018). 
		In this paper, the authors provide a holistic solution industry 4.0 
		solution towards industrial maintenance. The authors focus on the Οil 
		refinery industry maintenance and present their proposed management 
		system architecture, system implementation, technical and functional 
		characteristics in the following sections. Figure 1 illustrates the 
		authors' proposed high-level system architecture. 
		Towards the direction of Industrial Maintenance and Industry 4.0, the 
		authors propose a framework consisting of the following actions as part 
		of their approach and methodology  that ensembles their proposed system 
		architecture: 
		Action 1: 3D Industrial models and 3D Industrial 
		infrastructures representation. The 3D industrial assets and 
		infrastructures representation over the cloud is a significant step for 
		visualizing and monitoring personnel and assets. It leads to the 
		enforcement of digital twins via implementing the Resources Management 
		system and its accommodated services for data management and monitoring 
		purposes. Additionally, the definition of access zones and the 
		utilization of GPS/Indoor position technologies such as BLE and UWB will 
		provide additional location-based services for both personnel and 
		Industrial assets. 
		Action 2: Centralized and normalized maintenance processes. 
		This action includes developing cloud services provided by a Resources 
		Management system. This system includes processes and plans per 
		machinery (asset), historical maintenance information, technical 
		specifications, and guidelines for maintenance operations. It also 
		interfaces with already stored Industrial parts per asset, 
		personnel/assets tracking services, generate tasks, and issue alerts and 
		notifications. In addition, the proposed system will be capable of 
		interacting with mobile tablets and exchanging real-time information 
		with the maintenance personnel in the field.     
		Action 3: Centralized assets sensory repository and machine 
		learning processes. The proposed Resources Management System 
		includes appropriate sensory storage engines, where all sensory 
		information per asset is stored in real-time. Appropriate Industrial 
		Wi-Fi/NBIoT/LoRa infrastructure,  utilized to collect machinery 
		data. The collected data are sent to the cloud logging service. 
		Additionally, deep learning and data mining processes are utilized for 
		monitoring and management purposes. Appropriate sensory data 
		visualization is offered to the mobile end node devices (tablets) using 
		secure transmission channels as part of asynchronous management or 
		requested industrial maintenance tasks. 
		Action 4: Unified system including AR capabilities and VR 
		training methods. Includes integrating the assets as objects 
		rendered by mobile devices (tablets) and their provided AR capabilities 
		to implement services such as 3D draw and send or 3D alerts illustration 
		and 3D illustrative maintenance using 3D rendering and 3D annotation. 
		Additionally, the use of pre-trained convolutional neural networks and 
		image segmentation techniques will also be used as part of the assets or 
		assets malfunction placement detection. Finally, VR technology is 
		included as part of personnel facility guidance and training for 
		specific Industrial maintenance operations. 
		Based on their framework proposition and methodology, the authors 
		propose a new system for technical maintenance for the oil refinery 
		industry. The main industrial parts applied to the proposition are 
		flammable gas or liquid pumps and compressors. The proposed system is 
		presented in Figure 2 and includes the following components:
		
		Figure 2. Proposed Maintenance system for Oil 
		refinery industries high-level architecture
		Data Collection component: Data collection component 
		includes the cloud database engine for the MMS, the 3D point cloud data 
		storage for the point cloud factory and assets visualization, and the 
		NoSQL database for the collection of assets sensor measurements, divided 
		per asset I.D. The data collection component also includes the agents 
		and services for collecting, securing the data (data acquisition and 
		logging services), and providing the data. Data acquisition for the MMS 
		component for tasks and processes is performed over SSL HTTP POSTS 
		(Kontogiannis and Asiminidis, 2021). Data acquisition for the personnel 
		positioning service is performed using NodeJS HTTP over AES-128 
		encrypted data streams (Yassein et al., 2017, Profanter et al., 2019). 
		Data acquisition for sensory data is performed via TLS-MQTT AES-128 and 
		base64 encoded data streams. Finally, 3D A.R. annotated point cloud 
		information is acquired using SSL DAV/ secure FTP services.
		Maintenance Management System component: The MMS 
		component is a cloud-based system that includes its relational Database 
		such as PostgreSQL, SQL Server, or Oracle SQL. The Management system 
		includes the logic and display functionality for periodic maintenance 
		tasks and the steps to be followed per asset. The MMS component can 
		provide via the Web: 1) pumps and compressors (called assets) 
		categorization and assets description manager, 2) a historical assets 
		maintenance information dashboard, 3) tasks and processes manager for 
		the creation of tasks, 4) maintenance personnel manager for the process 
		of tasks assignment, 5) automated digital forms creation for repair 
		procedures and static digital forms for maintenance procedures, 6) 
		procedures recording and forms logging functionality. Additionally, the 
		MMS component should include a mobile tablet app for the issue of 
		notifications/tasks and procedures reporting to the field engineers. 
		Communication between the cloud Web platform and the mobile tablet app 
		will be over secure 5G/6G cellular installations channels or the 
		factory-protected Wi-Fi installation.
		Factory AR visualization component: This component 
		includes the appropriate point cloud 3D representation of the factory 
		establishment with geofenced zones and on-demand assets 3D rendering at 
		the mobile device end. The factory representation includes a Web-based 
		3D point cloud view of the factory, with geofenced and georeferenced 
		ATEX zones (ATEX-137, 1992) and real-time marks of the personnel 
		position in the point-cloud render. The positioning of the personnel is 
		performed with the use of a positioning service installed at the 
		personnel's mobile devices. This service transmits GPS positioning 
		information for open area installations or BLE/UWB proximity information 
		for indoor establishments (Karaagac et al., 2017, Schmidt et al., 2018). 
		The factory A.R. component also includes the functionality of alerts 
		generation for restricted zone access and the addition of sensory and 
		informative augmented annotations to either the Stats Manager of the 
		sensory component or the Tasks Manager of the MMS component. The 
		Web-based 3D point cloud render of the compressor or pump also includes 
		asset annotations, where maintenance process steps information is 
		presented at the mobile device. Asset authentication is also available 
		using Q.R. code scanning or asset image detection from the mobile 
		device's camera. 
		Sensors component: Proposed maintenance systems 
		sensors measurements stored by the Data collection component must be 
		accessible to other processes, algorithms, and interfaces with other 
		systems. In this case, data input comes from existing pump and 
		compressor sensors, focusing on the authors' implementation for Oil 
		refinery maintenance. Those sensors are mainly temperature, pressure, 
		and vibration sensors. Using Profibus or Industrial Ethernet, these 
		sensors measurements are concentrated at the Distributed Control System 
		(DCS) operator station HMI from the assets (pumps or compressors) field 
		control stations. Then from the operation station, the data are uploaded 
		to a cloud-based MongoDB Database (Harrison and Harrison, 2021). This 
		database acts as a centralized storage point offering statistical links 
		for plotting and 3D annotating sensor measures to the point cloud Web 
		component. The data collection component also includes agents and bots 
		capable of issuing assets notifications regarding assets status and 
		maintenance estimations. Such information is inferred using trained 
		regressors, machine learning classifiers, or Recurrent Neural Networks 
		(Tedjopurnomo et al., 2020, Bochie et al., 2021).
		Mobile application component: The mobile application 
		includes the services and activities for more timely and less 
		error-prone asset maintenance tasks. It includes the Q.R. or asset A.R. 
		asset detection, instance segmentation (Hayder et al., 2017, Zheng et 
		al., 2021), or A.R. asset segmentation via point cloud group 
		similarities (Wang et al., 2018). The MMS positioning service for indoor 
		and outdoor installations. The MMS maintenance tasks alerts and 
		notifications service and the A.R. visualization service provides 
		real-time sensor data, statistical data, and maintenance process steps 
		via assets annotation links (URLs) on top of point cloud layers. The 
		following section gives detailed information regarding the proposed 
		system components and functionality.
		4.    PROPOSED 
		MAINTENANCE SYSTEM INTERFACES AND SERVICES FUNCTIONALITY
		The detailed description of the proposed Industrial Maintenance 
		system components is provided in the following subsections. At first, 
		the MMS component, services, and functionality are outlined. Then the 
		A.R. point-cloud visualization component is presented and its mobile 
		phone interface. Finally, the sensors management component is presented, 
		and the interoperability of the Q.R. asset detection with the 
		presentation of real-time sensor asset measurements via point cloud 
		annotations.
		4.1 Maintenance Management System component
		The purpose of the Industrial maintenance management system is to 
		store information regarding assets and incorporate the digital twins of 
		physical industrial assets to streamline the staff's predictive 
		maintenance and daily operations. First, basic information such as name, 
		type, serial number, manufacturer, and dimensions are recorded for each 
		machinery (asset). The Industrial Maintenance system also has the 
		capability of dynamic properties to cater to different asset categories' 
		different needs. Then the schedule maintenance plan is created by 
		uploading the relevant work orders and associated form templates for 
		every inspection. When a scheduled maintenance work order needs to be 
		performed, the assigned staff receives a notification regarding the 
		forthcoming activity. An important part of the industrial maintenance 
		system is its fault prediction of equipment parts ability, based on 
		time-series sensory data analysis and visualization for specific 
		metrics.
		
			
				
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		Figure 3.  Recorded compressor assets in an 
		Industrial maintenance system
		4.2 VR/AR visualization component and assets point cloud 
		representation
		In this study, the 3D point cloud of each survey has been extracted 
		to a specific e57 format file, a compatible format for FARO SCENE lite 
		viewer. Then, each derived point cloud was then transformed into a 
		compatible virtual reality scene (see Figure 4), using the previously 
		mentioned software package. Finally, the user can interact with each 3D 
		object using the oculus Rift controllers and collect valuable asset 
		information.
		
		Figure 4. Virtual reality with Oculus Rift S during 
		the survey of a compressor
		The following figure (fig.5) illustrates the augmented reality 
		smartphone application based on the marker (Q.R. code method) for object 
		recognition and tracking. This smartphone app allows each user to 
		monitor critical indicators during complex machinery operations 
		(compressors or pumps).
		
		Figure 5. Android-based smartphone app using marker 
		AR tracking
		4.3 Sensors Measurements Component
		The sensors measurements component is the core component for data 
		analysis and alerts prediction based on sensory input. It includes four 
		major parts: 1) The sensory database interface that connects the sensors 
		Measurements component to the data collection via appropriate JSON API, 
		2) The real-time and historical data representation called Stats 
		Manager, based on Telegraf and Grafana (Kychkin et al., 2019), 3) and 
		the raw data navigation and update called CRUD Manager for NoSQL data 
		(Jawarneh et al., 2018) and 3) Intelligent Agent (IAgent), that 
		traverses data via the JSON API providing assets predictions based on 
		past sensory data. The Stats Manager can provide detailed sensory 
		information per asset or sensor over time for interfacing with other 
		systems and services. The CRUD Manager is equipped with a JSON API for 
		remote requests over HTTP PUT or POST. Figure 6 illustrates the output 
		of the Stats and CRUD manager for a specific compressor asset. Figure 
		6(1) shows the real-time sensory data representations via the CRUD 
		Manager. In contrast, Figure 6(2) illustrates the compressor temperature 
		measurements graph and compressor vibration X, Y, Z-axis graph 
		measurements over time.
		
			
				
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		Figure 6. Compressor sensory component Stats Manager 
		and CRUD Manager output
		An important piece in this intelligent and predictive maintenance 
		architecture is the decision support system for maintenance technicians 
		during maintenance interventions. This smart decision support system, 
		called IAgent, articulated with human-machine interaction technologies, 
		e.g. augmented reality, contributes to a faster and more efficient 
		reaction and recovery of the failure occurs when compared to paper 
		procedures. Its core functionality is the deprivation of critical assets 
		malfunctions by providing prior information using a per asset sensory 
		equipped part predictions of probable malfunctions.
		In order to achieve that, a set of past data is required per sensory 
		asset part and alerts output issued for that part from the MMS 
		component. The volume of data needed depends on the max frequency of the 
		alerts monitored. For example, for sensory data stored per minute, ten 
		monitor alert types, and a max frequency of once a week, at least 
		100,000 sensory data points are needed for classifier train in a 
		supervised mode to provide accurate mapping to discrete alerts 
		(Windeatt, 2008, Alsariera et al., 2020, Saha et al., 2021). For alerts 
		issued for more complicated source inputs, meaning different asset 
		sensory parts or sensory types are contributing to the issue of the 
		alert, LSTM - RNNs are used to derive temporal patterns of prediction 
		(Wang et al., 2020). The further enhancements and evaluation of these 
		LSTMs using targeted compressors and their issued alerts are the 
		authors' ongoing research.
		4.4 Mobile Application component
		Augmented Reality (A.R.) can reduce maintenance process time and 
		improve quality by giving virtual information and assistance during 
		maintenance tasks. A set of experiments has been performed at (Havard et 
		al., 2016), showing -3% less maintenance time using tablets and -13% 
		using A.R. glasses from the standard process of paper-based maintenance 
		process performed with 25% fewer errors. Focusing on oil refinery 
		maintenance, the use of mobile phones or tablets requires special mobile 
		devices of appropriate safety regulations for zones of hazardous 
		materials called ATEX zone classes, divisions, and zones (ATEX-137, 
		1992). The maintenance compressors placed in an oil refinery 
		establishment follow Class 1/Division 2 Zone 2 ATEX directives for 
		mobile phones (ATEX-114, 2014) that signify ignitable concentrations of 
		flammable gasses, vapors, or liquids are in closed containers. Still, it 
		is likely to be released for short periods under normal operating 
		conditions.
		5.    CONCLUSIONS
		This study presents a holistic Industry 4.0 solution towards 
		industrial maintenance. It focuses on the oil refinery industry where 
		complex machines installation exists. An important parameter that needs 
		to be satisfied by the proposed framework is the production of digital 
		twins, which can be derived through accurate and detailed survey 
		campaigns. A digital twin is a virtual representation of a physical 
		object or process. Implementing a VR-capable Industrial maintenance 
		framework is essential because it allows analysis of the data and 
		systems involved in a new concept before they can even happen. It is a 
		bridge between the physical and digital worlds. The proposed by the 
		authors' framework and system architecture under implementation is a 
		step towards this direction of primarily unifying and automating the 
		reporting maintenance processes and assets monitoring under a cloud 
		platform that incorporates 3D assets visualization. Being at the 
		forefront of technology, the Oil and gas industry already utilizes 
		dynamic software models and can take advantage of this proposed concept 
		to ensure efficient and safe ongoing operations and design new 
		techniques and facilities. For example, replicating physical equipment 
		or processes in a virtual environment can optimize asset and process 
		improvements in the virtual world before applying them in the real one. 
		This could be done by adding digital features like real-time indicators 
		like a compressor's pressure, temperature, vibrations, as well as other 
		maintenance actions that can trigger alert scenarios.
		ACKNOWLEDGEMENTS
		This research has been co-financed by the European Union and Greek 
		national funds through the Operational Program Competitiveness, 
		Entrepreneurship and Innovation, under the call RESEARCH – CREATE – 
		INNOVATE (project code: T2EDK-00708). Mr N. Maroulas, Mr. G.Giougkis and 
		Mr. D.Chrisikopoulos managing and technical staff of Hellenic Petroleum 
		refinery are highly appreciated.
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		BIOGRAPHICAL NOTES
		Ion-Anastasios Karolos, holds a diploma in Rural and 
		Surveying Engineering (2012) and a Postgraduate Degree of Specialization 
		in Geoinformatics (2015). From January 2016 until the present, is a 
		Ph.D. Candidate in School of Rural and Surveying Engineering, Aristotle 
		University of Thessaloniki. His research interest mainly focuses on 
		hardware and software development of high precision GNSS receivers using 
		technologies like PCB designing (embedded design), 3D printing, and 
		smartphone applications. He is a member of the research project titled 
		"Liver3D" (https://www.liver3d.com/) for 3D printing of human liver for 
		medical purposes, co-funded by E.U. and National Funds. He has a lot of 
		programming experience using various programming languages (Swift, 
		Objective-C, Kotlin, Java, Python, C/C++) and software development kits 
		(iOS SDK, Android SDK).
		Stylianos Bitharis, holds an MSc degree in 
		Geoinformatics with a specialization in Modern Geodetic applications and 
		his Ph.D. at the Department of Geodesy and Surveying (Faculty of 
		Engineering, School of Rural and Surveying Engineering) at the Aristotle 
		University of Thessaloniki. His Ph.D. research is related to GNSS data 
		analysis, Geodetic velocity estimation, and their implementation in 
		Geodetic Reference Frames.
		Vasileios Tsioukas, Professor in the Dept. of 
		Geodesy and Surveying, School of Rural and Surveying Engineering, 
		Aristotle University of Thessaloniki. Education: Ph.D. in digital 
		Photogrammetry and Remote Sensing for the extraction of reliable 
		geometric information from close-range, aerial, and satellite sensors 
		(2000), B.Sc. in Electrical Engineering at the Aristotle University of 
		Thessaloniki. He has served as an assistant professor in the Dept. of 
		Architectural Engineering of the Democritus University of Thrace 
		(2003-2011). Visiting Professor (2005-2021) in the Postgraduate 
		Programme "Geoinformation in Environmental Management" at the 
		Mediterranean Agronomic Institute of Chania. Scientific co-operator of 
		the Cultural and Educational Technology Institute of Greece (CETI), 
		since 2004. His research has focused on Terrestrial Laser Scanning, 
		Mobil Mapping Systems, Photogrammetry and Remote Sensing for the 
		determination of 3D models of Cultural heritage, Digital Terrain Models 
		using stereoscopic aerial images and satellite SAR scenes for the 
		generation of orthoimages and large (1:50) and small scale maps 
		(1:50.000).
		Christos Pikridas, Professor in the Dept. of Geodesy 
		and Surveying, School of Rural and Surveying Engineering, Aristotle 
		University of Thessaloniki. PhD in Satellite Geodesy by the same 
		University. He is currently the Director of the Geodetic methods and 
		Satellite Applications Lab. at the Department of Geodesy and Surveying 
		of AUTh. He is an expert on GNSS data analysis. He has over 20 years of 
		research experience on GNSS modeling error sources, algorithm 
		development, quality check and specifications for permanent GNSS 
		monitoring networks installation, GNSS applications in engineering 
		projects, and natural disaster monitoring and management.
		Sotirios Kontogiannis, graduated from the Democritus 
		University of Thrace, Department of Electrical and Computer Engineering. 
		He received a M.Sc. in Software Engineering and Ph.D. from the same 
		department in the research area of algorithms and network protocols for 
		Distributed systems. He is currently a scientific staff member and 
		Director of the Distributed ΜicroComputer Systems Laboratory team MCSL 
		at the Dept. of Mathematics, University of Ioannina
		Theodosios Gkamas, received his B.Sc. and M.Sc. 
		degrees in Computer Science from the University of Ioannina, Greece, in 
		2008 and 2010, respectively, while he obtained a Ph.D. degree in Signal 
		and Image Processing from the University of Strasbourg, France, in 2015. 
		He was a postdoctoral Researcher with CERTH-ITI in Thessaloniki during 
		2018-2019. In 2020, he started working as a Senior A.I. Researcher, Lead 
		A.I. Software Engineer, and Project Manager at the Department of 
		Mathematics in the University of Ioannina, Greece. His research 
		interests mainly include Signal and Image Processing, Medical Image 
		Analysis, Bioinformatics, Machine Learning, Deep Learning, Computer 
		Vision, Pattern Recognition and their application to Medical/Biological 
		Imaging, Industrial IoT sensory data, and financial data.
		Nikolaos Zinas, holds a B.Sc. in surveying and 
		Mapping sciences, Msc. in Geodetic survey and Space Geodesy from 
		University of Nottingham and Ph.D.  in Geomatic Engineering from 
		UCL. He is the Managing Director at TEKMON P.C., a software company, 
		building a digital workspace for the daily operations and critical 
		communications of the desk-less workforce. He has over 10 years of 
		experience, including general management and software product 
		development from idea to commercialization.
		CONTACTS
		Karolos, Ion Anastasios,
		School of Rural and Survey-ing Eng.,
		The Aristotle University of Thessaloniki,
		Greece
		Stylianos Bitharis,
		School of Rural and Survey-ing Eng.,
		The Aristotle University of Thessaloniki,
		Greece
		Vasileios Tioukas, 
		School of Rural and Survey-ing Eng.,
		The Aristotle University of Thessaloniki,
		Greece
		Christos Pikridas,
		School of Rural and Survey-ing Eng.,
		The Aristotle University of Thessaloniki,
		Greece
		Sotirios Kontogiannis,
		Dept. of Mathematics, University of Ioannina
		MicroComputer Systems Laboratory team
		Ioannina
		GREECE
		Theodosios Gkamas,
		Laboratory of Distributed MicroComputer Systems MCSL,
		Dept. of Mathematics,
		The University of Ioannina,
		Greece
		Nikolaos Zinas,
		Tekmon IKE,
		Ioannina,
		Greece