Critical review of real-time methods for solid waste characterisation: Informing material recovery and fuel production.

Waste management processes generally represent a significant loss of material, energy and economic resources, so legislation and financial incentives are being implemented to improve the recovery of these valuable resources whilst reducing contamination levels. Material recovery and waste derived fuels are potentially valuable options being pursued by industry, using mechanical and biological processes incorporating sensor and sorting technologies developed and optimised for recycling plants. In its current state, waste management presents similarities to other industries that could improve their efficiencies using process analytical technology tools. Existing sensor technologies could be used to measure critical waste characteristics, providing data required by existing legislation, potentially aiding waste treatment processes and assisting stakeholders in decision making. Optical technologies offer the most flexible solution to gather real-time information applicable to each of the waste mechanical and biological treatment processes used by industry. In particular, combinations of optical sensors in the visible and the near-infrared range from 800nm to 2500nm of the spectrum, and different mathematical techniques, are able to provide material information and fuel properties with typical performance levels between 80% and 90%. These sensors not only could be used to aid waste processes, but to provide most waste quality indicators required by existing legislation, whilst offering better tools to the stakeholders.

[1]  Jeff Fortuna,et al.  Visual sorting of recyclable goods using a support vector machine , 2010, CCECE 2010.

[2]  Somsak Saisinchai,et al.  Separation of PVC from PET/PVC Mixtures Using Flotation by Calcium Lignosulfonate Depressant , 2014 .

[3]  Seyed Ali Sanaee Ultrasound For Monitoring And Quality Inspection In MDS Plastics Recycling , 2009 .

[4]  Henrik Wenzel,et al.  Central sorting and recovery of MSW recyclable materials: A review of technological state-of-the-art, cases, practice and implications for materials recycling. , 2015, Journal of environmental management.

[5]  Jack T. Beavers,et al.  Mass balance , 2019, Principles of Glacier Mechanics.

[6]  J. P.,et al.  Qualitative and Quantitative Analysis. , 1931, Nature.

[7]  Julian Morris,et al.  Process analytical technologies and real time process control a review of some spectroscopic issues and challenges , 2011 .

[8]  Gibson,et al.  Object Identification , 2017, Encyclopedia of Machine Learning and Data Mining.

[9]  Uwe Schnell,et al.  Advanced Size Measurements and Aerodynamic Classification of Solid Recovered Fuel Particles , 2006 .

[10]  Helmut Rechberger,et al.  Material Flow Analysis , 2016 .

[11]  Jenna Jambeck,et al.  Evaluation of XRF and LIBS technologies for on-line sorting of CCA-treated wood waste. , 2004, Waste management.

[12]  S. Arnaiz,et al.  Identification of bioplastics by NIR-SWIR-Hyperspectral-Imaging , 2015 .

[13]  R Sarc,et al.  Design, quality, and quality assurance of solid recovered fuels for the substitution of fossil feedstock in the cement industry , 2014, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[14]  Matthias Rückwardt,et al.  OPTICAL IDENTIFICATION OF CONSTRUCTION AND DEMOLI- TION WASTE BY USING IMAGE PROCESSING AND MACHINE LEARNING METHODS , 2011 .

[15]  Lujia Han,et al.  Prediction of heating value of straw by proximate data, and near infrared spectroscopy , 2008 .

[16]  R. Mattone,et al.  Sorting of items on a moving conveyor belt. Part 1: a technique for detecting and classifying objects , 2000 .

[17]  Francesco Di Maria,et al.  Grain-size assessment of fine and coarse aggregates through bipolar area morphology , 2015, Machine Vision and Applications.

[18]  Seyed Hassan Tavassoli,et al.  Discrimination of polymers by laser induced breakdown spectroscopy together with the DFA method , 2012 .

[19]  P J Longhurst,et al.  Determination of renewable energy yield from mixed waste material from the use of novel image analysis methods. , 2013, Waste management.

[20]  V. Mallapragada,et al.  Optical sensor for noncontact measurement of lignin content in high-speed moving paper surfaces , 2005, IEEE Sensors Journal.

[21]  Wei Yu,et al.  The Current Status of Process Analytical Technologies in the Dairy Industry , 2015 .

[22]  William G. Smith,et al.  Current status , 1984 .

[23]  T. Lestander,et al.  Multivariate NIR spectroscopy models for moisture, ash and calorific content in biofuels using bi-orthogonal partial least squares regression. , 2005, The Analyst.

[24]  A Santoro,et al.  On-line monitoring. , 1995, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[25]  Hongzhang Chen,et al.  Near-infrared analysis of the chemical composition of rice straw , 2007 .

[26]  H. Wu,et al.  Quality-by-Design (QbD): An integrated process analytical technology (PAT) approach for a dynamic pharmaceutical co-precipitation process characterization and process design space development. , 2011, International journal of pharmaceutics.

[27]  S. M. Latyev,et al.  Increasing the Safety in Recycling of Construction and Demolition Waste by Using Supervised Machine Learning , 2015 .

[28]  Atul Thakur,et al.  A review on automated sorting of source-separated municipal solid waste for recycling. , 2017, Waste management.

[29]  Mansoor A. Khan,et al.  Quality-by-Design (QbD): an integrated process analytical technology (PAT) approach for real-time monitoring and mapping the state of a pharmaceutical coprecipitation process. , 2010, Journal of pharmaceutical sciences.

[30]  Richard W. Conners,et al.  A real-time algorithm for color sorting edge-glued panel parts , 1997, Proceedings of International Conference on Image Processing.

[31]  E. Adelson,et al.  Accuracy and speed of material categorization in real-world images. , 2014, Journal of vision.

[32]  Antonio Canals,et al.  Analysis of waste electrical and electronic equipment (WEEE) using laser induced breakdown spectroscopy (LIBS) and multivariate analysis. , 2013, Talanta.

[33]  Andrew A. Goldenberg,et al.  An eye-hand system for automated paper recycling , 1997, Proceedings of International Conference on Robotics and Automation.

[34]  Renato Sarc,et al.  Design and quality assurance for solid recovered fuel , 2012, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[35]  Peter Carlo Rem,et al.  Grade and Recovery Prediction for Eddy Current Separation Processes , 1998 .

[36]  P. Abell,et al.  Visible/Near-Infrared Spectral Properties of MUSES C Target Asteroid 25143 Itokawa , 2004 .

[37]  R. Noll,et al.  Fast single piece identification with a 3D scanning LIBS for aluminium cast and wrought alloys recycling , 2011 .

[38]  M A Hannan,et al.  A review on technologies and their usage in solid waste monitoring and management systems: Issues and challenges. , 2015, Waste management.

[39]  Evaluation of Near-infrared Spectroscopy as a Rapid Method for Estimating the Carbon Stored per Unit Area in a Wetland , 2002 .

[40]  R. Bayard,et al.  Mass balance to assess the efficiency of a mechanical-biological treatment. , 2008, Waste management.

[41]  Katharina Anding,et al.  Significant Characteristics in VIS- and IR-Spectrum of CDW for High-Precision Supervised Classification The 2nd International Conference on Optical Characterization of Materials (OCM-2015) in Karlsruhe , 2015 .

[42]  Silvia Serranti,et al.  Quality control by HyperSpectral Imaging (HSI) in solid waste recycling: logics, algorithms and procedures , 2014, Electronic Imaging.

[43]  Vera Susanne Rotter,et al.  Material flow analysis of RDF-production processes. , 2004, Waste management.

[44]  J. Anzano,et al.  Plastic identification and comparison by multivariate techniques with laser-induced breakdown spectroscopy , 2011 .

[45]  P J Longhurst,et al.  Characterising the composition of waste-derived fuels using a novel image analysis tool. , 2015, Waste management.

[46]  Timothy G. Rials,et al.  Analysis of preservative-treated wood by multivariate analysis of laser-induced breakdown spectroscopy spectra , 2005 .

[47]  Andrea Corti,et al.  A review of technologies and performances of thermal treatment systems for energy recovery from waste. , 2015, Waste management.

[48]  Paul F. Whelan,et al.  > Replace This Line with Your Paper Identification Number (double-click Here to Edit) < , 2022 .

[49]  Frank Kreith,et al.  Handbook of Solid Waste Management , 2002 .

[50]  Sohail Ahmad Solid Waste Management Challenges and Solutions , 2016 .

[51]  Nickolas J. Themelis,et al.  Technical and Economic Impacts of Pre-Shredding the MSW Feed to Moving Grate WTE Boilers , 2009 .

[52]  K. Cammanna NIR-Remote Sensing and Artificial Neural Networks for Rapid Identification of Post Consumer Plastics , 2017 .

[53]  Arne Ragossnig,et al.  Biogenic carbon-enriched and pollutant depleted SRF from commercial and pretreated heterogeneous waste generated by NIR sensor-based sorting , 2012, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[54]  Kalyan Chakravarthi Katuri Development of Online Stiffness Sensor for High Speed Sorting of Recovered Paper , 2006 .

[55]  A. Ward Near‐Infrared Spectroscopy for Determination of the Biochemical Methane Potential: State of the Art , 2016 .

[56]  Kumari Shikha Ojha,et al.  Sustainable and consumer-friendly emerging technologies for application within the meat industry: An overview. , 2016, Meat science.

[57]  P. Geladi,et al.  Chemometrics and intelligent laboratory systems Plastic identification by remote sensing spectroscopic NIR imaging using kernel partial least squares ( KPLS ) , 2003 .

[58]  William Hogland,et al.  Solid waste management challenges for cities in developing countries. , 2015, Waste management.

[59]  Anurag S. Rathore,et al.  Integrating systems analysis and control for implementing process analytical technology in bioprocess development , 2015 .

[60]  K. Yasuda,et al.  Basic Evaluation Of Sorting Technologies ForCCA Treated Wood Waste. , 2006 .

[61]  P. Vainikka,et al.  Mass, energy and material balances of SRF production process. Part 1: SRF produced from commercial and industrial waste. , 2014, Waste management.

[62]  T. Townsend,et al.  Pilot scale evaluation of sorting technologies for CCA treated wood waste , 2002, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[63]  H K Jeswani,et al.  Assessing the environmental sustainability of energy recovery from municipal solid waste in the UK. , 2016, Waste management.

[64]  O. N. Ağdağ,et al.  Effects of shredding of wastes on the treatment of municipal solid wastes (MSWs) in simulated anaerobic recycled reactors , 2005 .

[65]  Petra Tatzer,et al.  Industrial application for inline material sorting using hyperspectral imaging in the NIR range , 2005, Real Time Imaging.

[66]  N. B. Zorov,et al.  Qualitative and quantitative analysis of environmental samples by laser-induced breakdown spectrometry , 2015 .

[67]  T. Martins,et al.  A computer vision system for color grading wood boards using Fuzzy Logic , 2008, 2008 IEEE International Symposium on Industrial Electronics.

[68]  Toyohisa Fujita,et al.  Recent developments in magnetic methods of material separation , 2003 .

[69]  K. McDonnell,et al.  Visible-Near Infrared Spectral Sensing Coupled with Chemometric Analysis as a Method for on-line Prediction of Milled Biomass Composition Pre-Pelletising , 2012 .

[70]  Near-infrared imaging spectroscopy (NIRIS) and image rank analysis for remote identification of plastics in mixed waste , 1996, Analytical and bioanalytical chemistry.

[71]  C. Laroche,et al.  Predicting the biochemical methane potential of wide range of organic substrates by near infrared spectroscopy. , 2013, Bioresource technology.

[72]  Brajesh Dubey,et al.  Evaluation of methods for sorting CCA-treated wood. , 2007, Waste management.

[73]  Hassan Basri,et al.  A critical review on waste paper sorting techniques , 2014, International Journal of Environmental Science and Technology.

[74]  Timothy G Townsend,et al.  Municipal solid waste in situ moisture content measurement using an electrical resistance sensor. , 2003, Waste management.

[75]  Katharina Dipl.-Ing. Anding,et al.  Application of intelligent image processing in the construction material industry , 2013 .

[76]  Frans van den Berg,et al.  Process Analytical Technology in the food industry , 2013 .

[77]  David A. Boas,et al.  Near infrared imaging , 2009, Scholarpedia.

[78]  Hans Hartmann,et al.  Moisture content determination in solid biofuels by dielectric , 2006 .

[79]  Hermann Wotruba,et al.  Viable Applications of Sensor-Based Sorting for the Processing of Mineral Resources† , 2014 .

[80]  Silvia Serranti,et al.  Automatic detection and classification of EOL-concrete and resulting recovered products by hyperspectral imaging , 2014, Sensing Technologies + Applications.

[81]  Ni-Bin Chang,et al.  Environmental Informatics for Solid and Hazardous Waste Management: Advances, Challenges, and Perspectives , 2013 .

[82]  K. McDonnell,et al.  Evaluation of infrared techniques for the assessment of biomass and biofuel quality parameters and conversion technology processes: A review , 2014 .

[83]  Somsubhra Chakraborty,et al.  Visible near infrared diffuse reflectance spectroscopy (VisNIR DRS) for rapid measurement of organic matter in compost , 2012, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[84]  Hassan Basri,et al.  Object identification using DNA computing algorithm , 2012, 2012 IEEE Congress on Evolutionary Computation.

[85]  R. Sarc,et al.  Production, quality and quality assurance of Refuse Derived Fuels (RDFs). , 2013, Waste management.

[86]  Hyun-Woo Cho,et al.  Enhanced discrimination and calibration of biomass NIR spectral data using non-linear kernel methods. , 2008, Bioresource technology.

[87]  Naoki Kasai,et al.  Digital demodulator unit of laser vibrometer standard for in situ measurement , 2014 .

[88]  E. Rozet,et al.  Near infrared and Raman spectroscopy as Process Analytical Technology tools for the manufacturing of silicone-based drug reservoirs. , 2011, Analytica chimica acta.

[89]  Hassan Basri,et al.  DNA computer based algorithm for recyclable waste paper segregation , 2015, Appl. Soft Comput..

[90]  Douglas N Rutledge,et al.  Rapid discrimination of plastic packaging materials using MIR spectroscopy coupled with independent components analysis (ICA). , 2014, Waste management.

[91]  Aini Hussain,et al.  An efficient paper grade identification method for automatic recyclable waste paper sorting , 2009 .

[92]  Vincent Bombardier,et al.  Fuzzy rule classifier: Capability for generalization in wood color recognition , 2010, Eng. Appl. Artif. Intell..

[93]  Y. Yali Classification of waste plastics in simple ways , 2009 .

[94]  Kerry Hourigan,et al.  Wake transition of a rolling sphere , 2011, J. Vis..

[95]  Dzuraidah Abd. Wahab,et al.  Development of a Prototype Automated Sorting System for Plastic Recycling , 2006 .

[96]  Joana Beigbeder,et al.  Study of the physico-chemical properties of recycled polymers from waste electrical and electronic equipment (WEEE) sorted by high resolution near infrared devices , 2013 .

[97]  Noor Ezlin Ahmad Basri,et al.  Chromaticity based waste paper grade identification , 2012, Int. Arab J. Inf. Technol..

[98]  Kevin McDonnell,et al.  Prediction of biomass pellet quality indices using near infrared spectroscopy , 2015 .

[99]  Georg Brasseur,et al.  Design and analysis of a capacitive moisture sensor for municipal solid waste , 2008 .

[100]  Salma Mahgoub Gaffer Elhag Intelligent Waste Separator and Recycling (IWSR) using IoT and Evolutionary Fuzzy Logic Technology with energy efficient sensing during Hajj and Umrah crowd seasons , 2019 .

[101]  Timothy G Townsend,et al.  Online sorting of recovered wood waste by automated XRF-technology. Part I: detection of preservative-treated wood waste. , 2011, Waste management.

[102]  M. K. Ramasubramanian,et al.  Behavior of paper on a high speed conveyor subjected to air jet impingement: a method for estimating bending stiffness , 2007 .

[103]  N. Ziadi,et al.  Near‐Infrared Reflectance Spectroscopy Prediction of Soil Properties: Effects of Sample Cups and Preparation , 2009 .

[104]  M. B. Mesina,et al.  Automatic sorting of scrap metals with a combined electromagnetic and dual energy X-ray transmission sensor , 2007 .

[105]  Gary A. Baum,et al.  Elastic properties, paper quality, and process control , 1986 .

[106]  Kamel Singh,et al.  Chapter 1:Production and Properties of Fuels from Domestic and Industrial Waste , 2011 .

[107]  Qian Yiming,et al.  Environment-friendly technology for recovering nonferrous metals from e-waste: Eddy current separation , 2014 .

[108]  Robert Gross,et al.  Estimating bio-energy resource potentials to 2050: learning from experience , 2011 .

[109]  Richard D. Braatz,et al.  Assessment of Recent Process Analytical Technology (PAT) Trends: A Multiauthor Review , 2015 .

[110]  F. Bianconi,et al.  Quality assessment for recycling aggregates from construction and demolition waste: An image-based approach for particle size estimation. , 2016, Waste management.

[111]  Kevin McDonnell,et al.  Prediction of moisture, calorific value, ash and carbon content of two dedicated bioenergy crops using near-infrared spectroscopy. , 2011, Bioresource technology.

[112]  P. D. Fleming,et al.  Optical and photocatalytic properties of photoactive paper with polycrystalline TiO2 nanopigment for optimal product design , 2012 .

[113]  Gabriele Reich,et al.  Near-infrared spectroscopy and imaging: basic principles and pharmaceutical applications. , 2005, Advanced drug delivery reviews.

[114]  Jason E. Dickens Overview of Process Analysis and PAT , 2010 .

[115]  David Mory,et al.  Increased identification rate of scrap metal using Laser Induced Breakdown Spectroscopy Echelle spectra , 2015 .

[116]  Noor Ezlin Ahmad Basri,et al.  Waste paper grade identification system using window features , 2010 .

[117]  Winncy Y. Du,et al.  Resistive, Capacitive, Inductive, and Magnetic Sensor Technologies , 2014 .

[118]  Matti Kutila,et al.  Scrap Metal Sorting with Colour Vision and Inductive Sensor Array , 2005, International Conference on Computational Intelligence for Modelling, Control and Automation and International Conference on Intelligent Agents, Web Technologies and Internet Commerce (CIMCA-IAWTIC'06).

[119]  Marco J. Castaldi,et al.  Measurement of Particle Size and Shape of New York City Municipal Solid Waste and Combustion Residues Using Image Analysis , 2005 .

[120]  A. Jacob,et al.  In-situ moisture detection system with a vector network analyser , 2007 .

[121]  Non-parametric analysis of infrared spectra for recognition of glass and glass ceramic fragments in recycling plants. , 2008, Waste management.

[122]  J. Rantanen,et al.  On-line monitoring of moisture content in an instrumented fluidized bed granulator with a multi-channel NIR moisture sensor , 1998 .

[123]  Kevin McDonnell,et al.  Prediction of biomass gross calorific values using visible and near infrared spectroscopy , 2012 .

[124]  Timothy G Townsend,et al.  Use of handheld X-ray fluorescence spectrometry units for identification of arsenic in treated wood. , 2007, Environmental pollution.

[125]  C A Velis,et al.  Biodrying for mechanical-biological treatment of wastes: a review of process science and engineering. , 2009, Bioresource technology.

[126]  Peter Meinlschmidt,et al.  Application of near-infrared spectroscopy for the fast detection and sorting of wood–plastic composites and waste wood treated with wood preservatives , 2015, Wood Science and Technology.

[127]  M. K. Ramasubramanian,et al.  Sensor systems for high-speed intelligent sorting of waste paper in recycling , 2012 .

[128]  Muhammad Ishfaq Infrared technology and its applications in textile recycling technology : improving sustainability in clothing Industry , 2015 .

[129]  W. Kurdthongmee,et al.  Colour classification of rubberwood boards for fingerjoint manufacturing using a SOM neural network and image processing , 2008 .

[130]  Pauli Immonen Quality assurance of refuse derived fuel with machine vision , 2015 .

[131]  Markku Hurme,et al.  Mass, energy and material balances of SRF production process. Part 3: Solid recovered fuel produced from municipal solid waste , 2015, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[132]  Hassan Basri,et al.  Intelligent computer vision system for segregating recyclable waste papers , 2011, Expert Syst. Appl..

[133]  C. J. Huang,et al.  Proximate analysis and calorific value estimation of rice straw by near infrared reflectance spectroscopy , 2008 .

[134]  Stuart Thomas Wagland,et al.  Development of an image-based analysis method to determine the physical composition of a mixed waste material. , 2012, Waste management.

[135]  U. Kaatze,et al.  Electromagnetic techniques for moisture content determination of materials , 2010 .

[136]  Irsyadi Yani,et al.  Development of Identification System of cans And Bottle , 2015 .

[137]  Liang Li,et al.  A dynamic material discrimination algorithm for dual MV energy X-ray digital radiography. , 2016, Applied radiation and isotopes : including data, instrumentation and methods for use in agriculture, industry and medicine.

[138]  N. Fraunholcz,et al.  Separation of waste plastics by froth flotation––a review, part I , 2004 .

[139]  Costas A. Velis,et al.  Production and Quality Assurance of Solid Recovered Fuels Using Mechanical—Biological Treatment (MBT) of Waste: A Comprehensive Assessment , 2010 .

[140]  Manel Alcalà,et al.  Real-time determination of critical quality attributes using near-infrared spectroscopy: a contribution for Process Analytical Technology (PAT). , 2012, Talanta.

[141]  Hui Wang,et al.  Flotation separation of waste plastics for recycling-A review. , 2015, Waste management.

[142]  Neda Perunovi,et al.  Please cite this article: SALIVARY AND PLASMA INFLAMMATORY MEDIATORS AND SECRETORY STATUS IN PRETERM DELIVERY WOMEN WITH PERIODONTITIS – A CROSS SECTIONAL STUDY SALIVARNI I INFLAMATORNI MEDIJATORI PLAZME I SEKRETORNI STATUS KOD PREVREMENOG POROĐAJA ŽENA SA PERIODONTITISOM – STUDIJA PRESEKA , 2018 .

[143]  C J Banks,et al.  Impact of different particle size distributions on anaerobic digestion of the organic fraction of municipal solid waste. , 2013, Waste management.

[144]  Adrian Badea,et al.  Integrated municipal solid waste scenario model using advanced pretreatment and waste to energy processes , 2013 .

[145]  G. Kelly,et al.  Feasibility of embedded wireless sensors for monitoring of concrete curing and structural health , 2010, Smart Structures and Materials + Nondestructive Evaluation and Health Monitoring.

[146]  M. Siddiqui,et al.  Identification of different kinds of plastics using laser-induced breakdown spectroscopy for waste management , 2007, Journal of Environmental Science and Health. Part A: Toxic/Hazardous Substances and Environmental Engineering.

[147]  Stuart O. Nelson,et al.  Microwave dielectric method for the rapid, non-destructive determination of bulk density and moisture content of peanut hull pellets , 2013 .

[148]  J P Steyer,et al.  First step towards a fast analytical method for the determination of Biochemical Methane Potential of solid wastes by near infrared spectroscopy. , 2011, Bioresource technology.

[149]  Elena Kazamia,et al.  Assessing the environmental sustainability of biofuels. , 2014, Trends in plant science.

[150]  Zhengfu Bian,et al.  Intelligent solid waste processing using optical sensor based sorting technology , 2010, 2010 3rd International Congress on Image and Signal Processing.

[151]  Johannes D. Pedarnig,et al.  In-line measurements of chlorine containing polymers in an industrial waste sorting plant by laser-induced breakdown spectroscopy , 2014 .

[152]  Markku Hurme,et al.  Mass, energy and material balances of SRF production process. Part 2: SRF produced from construction and demolition waste. , 2014, Waste management.

[153]  Mohammed A. Hannan,et al.  Real-time waste paper grading using CBR approach , 2012 .

[154]  Mohammad Sadeghi,et al.  Size Distribution Estimation of Stone Fragments via Digital Image Processing , 2010, ISVC.

[155]  Jacek Urbański,et al.  Automated granulometric analysis and grain-shape estimation of beach sediments using object-based image analysis , 2011 .

[156]  Hassan Basri,et al.  Segregating recyclable waste papers using co-occurrence features , 2009 .

[157]  Jun Zhang,et al.  A systematic framework to monitor mulling processes using Near Infrared spectroscopy , 2016 .

[158]  Yangjun Zhang,et al.  Density-Independent High Moisture Content Measurement Using Phase Shifts at Two Microwave Frequencies , 2010, The Journal of microwave power and electromagnetic energy : a publication of the International Microwave Power Institute.

[159]  M. Shapiro,et al.  Air classification of solid particles: a review , 2005 .

[160]  David W. Hahn,et al.  On-Line Sorting of Wood Treated with Chromated Copper Arsenate Using Laser-Induced Breakdown Spectroscopy , 2002 .

[161]  H. Wu,et al.  Quality-by-design (QbD): an integrated approach for evaluation of powder blending process kinetics and determination of powder blending end-point. , 2009, Journal of pharmaceutical sciences.

[162]  Bilge Baytekin,et al.  Retrieving and converting energy from polymers: deployable technologies and emerging concepts , 2013 .

[163]  Sabine Flamme,et al.  Quality standards and requirements for solid recovered fuels: a review , 2012, Waste management & research : the journal of the International Solid Wastes and Public Cleansing Association, ISWA.

[164]  E. Smidt,et al.  Classification of waste materials using Fourier transform infrared spectroscopy and soft independent modeling of class analogy. , 2008, Waste management.

[165]  R. Mattone,et al.  Sorting of items on a moving conveyor belt. Part 2: performance evaluation and optimization of pick-and-place operations , 2000 .