$\require{mediawiki-texvc}$

연합인증

연합인증 가입 기관의 연구자들은 소속기관의 인증정보(ID와 암호)를 이용해 다른 대학, 연구기관, 서비스 공급자의 다양한 온라인 자원과 연구 데이터를 이용할 수 있습니다.

이는 여행자가 자국에서 발행 받은 여권으로 세계 각국을 자유롭게 여행할 수 있는 것과 같습니다.

연합인증으로 이용이 가능한 서비스는 NTIS, DataON, Edison, Kafe, Webinar 등이 있습니다.

한번의 인증절차만으로 연합인증 가입 서비스에 추가 로그인 없이 이용이 가능합니다.

다만, 연합인증을 위해서는 최초 1회만 인증 절차가 필요합니다. (회원이 아닐 경우 회원 가입이 필요합니다.)

연합인증 절차는 다음과 같습니다.

최초이용시에는
ScienceON에 로그인 → 연합인증 서비스 접속 → 로그인 (본인 확인 또는 회원가입) → 서비스 이용

그 이후에는
ScienceON 로그인 → 연합인증 서비스 접속 → 서비스 이용

연합인증을 활용하시면 KISTI가 제공하는 다양한 서비스를 편리하게 이용하실 수 있습니다.

Evaluation of some non-invasive approaches for the detection of red palm weevil infestation 원문보기

Saudi journal of biological sciences, v.27 no.1, 2020년, pp.401 - 406  

Ghulam Rasool, Khawaja (Economic Entomology Research Unit, College of Food and Agriculture Sciences, King Saud University) ,  Husain, Mureed (Economic Entomology Research Unit, College of Food and Agriculture Sciences, King Saud University) ,  Salman, Shehzad (Economic Entomology Research Unit, College of Food and Agriculture Sciences, King Saud University) ,  Tufail, Muhammad (Economic Entomology Research Unit, College of Food and Agriculture Sciences, King Saud University) ,  Sukirno, Sukirno (Entomology Laboratory, Universitas Gadjah Mada) ,  Mehmood, Khalid (Economic Entomology Research Unit, College of Food and Agriculture Sciences, King Saud University) ,  Aslam Farooq, Wazirzada (Department of Physics and Astronomy, College of Science, King Saud University) ,  Aldawood, Abdulrahman S. (Economic Entomology Research Unit, College of Food and Agriculture Sciences, King Sa)

Abstract AI-Helper 아이콘AI-Helper

Abstract Red palm weevil (RPW) causes severe damage to date palm trees, leading to the death of trees if not detected and treated in time. A major obstacle in RPW control is the difficulty in identifying an early stage infestation In the present study, we measured the efficacy of some non-invasive ...

주제어

참고문헌 (43)

  1. Abraham V.A. Faleiro J.R. Al-Shuaibi M.A. Al-Abdan S. Status of pheromone trap captured female red palm weevils from date gradens in Saudi Arabia J. Trop. Agri. 39 2001 197 199 

  2. Al-Ayedh H. Evaluation of date palm cultivars for rearing the red date palm weevil, Rhynchophorus ferrugineus (Coleoptera: Curculionidae) Fla. Entomol. 91 2008 353 359 

  3. Al-Sheaby, F., 2010. SABIC launches Red Palm Weevil workshop as part of its commitment to global corporate social responsibility. < http://www.sabic.com/corporate/en/newsandmediarelations/news/20100331-2.aspx >. 

  4. Amigo J.M. Cruz J. Bautista M. Maspoch S. Coello J. Blanco M. Study of pharmaceutical samples by NIR chemical-image and multivariate analysis Trends Analyt. Chem. 27 2008 696 713 

  5. Blanco M. Cruz J. Bautista M. Development of a univariate calibration model for pharmaceutical analysis based on NIR spectra Anal. Bioanal. Chem. 392 2008 1367 1372 18854989 

  6. Buning-Pfaue H. Hartmann R. Harder J. Kehraus S. Urban C. NIR-spectrometric analysis of food. Methodical development and achievable performance values Fresenius J. Anal. Chem. 360 1998 832 835 

  7. Butnor J.R. Pruyn M.L. Shaw D.C. Harmon M.E. Mucciardi A.N. Ryan M.G. Detecting defects in conifers with ground penetrating radar: applications and challenges For. Pathol. 39 2009 309 322 

  8. Ciurczak E.W. Biomedical applications of near-infrared spectroscopy Burns D.A. Ciurczak E.W. Handbook of Near-infrared Analysis second ed. 2001 Marcel dekker Inc New York 633 646 

  9. Dowell F. Ram M. Seitz L. Predicting scab, vomitoxin, and ergosterol in single wheat kernels using near-infrared spectroscopy Cereal Chem. 76 1999 573 576 

  10. Dowell F.E. Throne J.E. Baker J.E. Automated nondestructive detection of internal insect infestation of wheat kernels by using near-infrared reflectance spectroscopy J. Econ. Entomol. 91 1998 899 904 

  11. Faleiro J.R. A review of the issues and management of the red palm weevil Rhynchophorus ferrugineus (Coleoptera: Rhynchophoridae) in coconut and date palm during the last one hundred years Int. J. Trop. Insect Sci. 26 2006 135 154 

  12. Faleiro J.R. Kumar J. A rapid decision sampling plan for implementing area?wide management of the red palm weevil, Rhynchophorus ferrugineus , in coconut plantations of India J. Insect Sci. 8 2008 1 9 

  13. Falla F.S. Larini C. Le Roux G.A.C. Quina F.H. Moro L.F.L. Nascimento C.A.O.D. Characterization of crude petroleum by NIR J. Pet. Sci. Eng. 51 2006 127 137 

  14. FAO, 2017. FAOSTAT database collection. Food and Agriculture Organization of the United Nation, Rome. http://www.fao.org (accessed on 21 February 2017). 

  15. Foley W.J. McIlwee A. Lawler I. Aragones L. Woolnough A.P. Berding N. Ecological applications of near infrared reflectance spectroscopy?a tool for rapid, cost-effective prediction of the composition of plant and animal tissues and aspects of animal performance Oecologia 116 1998 293 305 28308060 

  16. Fracchiolla N. Artuso S. Cortelezzi A. Biosensors in clinical practice: focus on oncohematology Sensors 13 2013 6423 6447 23673681 

  17. Gutierrez A. Ruiz V. Molto E. Tapia G. del Mar Tellez M. Development of a bioacoustic sensor for the early detection of Red Palm Weevil ( Rhynchophorus ferrugineus Olivier) Crop Prot. 29 2010 671 676 

  18. Gutierrez S. Diago M.P. Fernandez-Novales J. Tardaguila J. Vineyard water status assessment using on-the-go thermal imaging and machine learning PloS One 13 2018 e0192037 29389982 

  19. Halabe U.B. Agrawal S. Gopalakrishnan B. Nondestructive evaluation of wooden logs using ground penetrating radar Nondestruct. Test. Eva. 24 2009 329 346 

  20. Hoffmann N. Schroder T. Schluter F. Meinlschmidt P. Potential of infrared thermography to detect insect stages and defects in young trees J. Kulturpflanzen 65 2013 337 346 

  21. Hoyer H. NIR on-line analysis in the food industry Process Control Qual. 9 1997 143 152 

  22. Johnsen, E., 1997. How to use on-line NIR in the feed and food industries Process Control and Quality. 9, 205?206. 

  23. Justino C. Duarte A. Rocha-Santos T. Recent progress in biosensors for environmental monitoring: a review Sensors 17 2017 2918 

  24. Kaffka K. How the NIR technology came to and spread in Europe for quality assessment and control in the food industry Acta Alimentaria 37 2008 141 145 

  25. Kemsley E.K. Tapp H.S. Binns R. Mackin R.O. Peyton A.J. Feasibility study of NIR diffuse optical tomography on agricultural produce Postharvest Biol. Technol. 48 2008 223 230 

  26. Li W. Wen J. Xiao Z. Xu S. Application of ground-penetrating radar for detecting internal anomalies in tree trunks with irregular contours Sensors 18 2018 649 

  27. Miranda J.L. Gerardo B.D. Tanguilig B.T. III Pest detection and extraction using image processing techniques Int. J. Comput. Commun. Eng. 3 2014 189 

  28. Murray, I., 1987. Chemical principles of near-infrared technology. Near-infrared technology in the agricultural and food industries, 17?34. 

  29. Murugaboopathi G. Parthasarathy V. Chellaram C. Anand T.P. Vinurajkumar S. Applications of biosensors in food industry Biosci. Biotechnol. Res. Asia 10 2013 711 714 

  30. Nakash J. Osem Y. Kehat M. A suggestion to use dogs for detecting Red Palm Weevil ( Rhynchophorus ferrugineus ) infestation in date palms in Israel Phytoparasitica 28 2000 153 155 

  31. Pallav P. Diamond G. Hutchins D.A. Green R. Gan T. A Near-Infrared (NIR) technique for imaging food materials J. Food Sci. 74 2009 E23 E33 19200093 

  32. Potamitis I. Ganchev T. Kontodimas D.C. On automatic bioacoustic detection of pests: the cases of Rhynchophorus ferrugineus and Sitophilus oryzae J. Econ. Entomol. 102 2009 1681 1690 19736784 

  33. Prince G. Clarkson J.P. Rajpoot N.M. Automatic detection of diseased tomato plants using thermal and stereo visible light images PLoS ONE 10 2015 e0123262 25861025 

  34. Ridgway C. Chambers J. Cowe I.A. Detection of grain weevils inside single wheat darnels by a very near infrared two-wavelength model J. Near Infrared Spectrosc 7 1999 213 221 

  35. Sando G. Dubois J. Seeing the chemicals in pharmaceutical tablets: with NIR chemical imaging Chim. Oggi 28 2010 40 42 

  36. SAS Institute SAS/STAT 9.2. Users guide 2009 SAS Institute Cary, NC 

  37. Syunyaev R. Balabin R. Akhatov I. Safieva J. Adsorption of petroleum asphaltenes onto reservoir rock sands studied by Near-Infrared (NIR) Spectroscopy Energy Fuels 23 2009 1230 1236 

  38. Tsenkova R. Itoh K. Natsuga M. Himoto J. Near infrared monitoring of biological objects on a dairy farm Near Infrared Spectroscopy 1996 565 572 

  39. Vanegas F. Bratanov D. Powell K. Weiss J. Gonzalez F. A novel methodology for improving plant pest surveillance in vineyards and crops using UAV-based hyperspectral and spatial data Sensors 18 2018 260 

  40. Walper S.A. Lasarte Aragones G. Sapsford K.E. Brown C.W. III Rowland C.E. Breger J.C. Medintz I.L. Detecting biothreat agents: From current diagnostics to developing sensor technologies ACS Sensors 3 2018 1894 2024 30080029 

  41. Williams P. Norris K. Near-infrared Technology in the Agricultural and Food Industries 1987 American Association of Cereal Chemists Inc. 

  42. Xiang, D. Berry, J., Buntz, S., Gargiulo, P., Cheney, J., Joshi, Y Wabuyele, B., Wu, H., Hamed, M., Hussain, A.S., Khan, M.A., 2009. Robust calibration design in the pharmaceutical quantitative measurements with near­infrared (NIR) spectroscopy: Avoiding the chemometric pitfalls. J. Pharm. Sci., 98, 1155?1166. 

  43. Xiao, X., Wen, J., Xiao, Z., Li, W., 2018. Detecting and measuring internal anomalies in tree trunks using radar data for layer identification. J. Sens. 

관련 콘텐츠

오픈액세스(OA) 유형

GOLD

오픈액세스 학술지에 출판된 논문

저작권 관리 안내
섹션별 컨텐츠 바로가기

AI-Helper ※ AI-Helper는 오픈소스 모델을 사용합니다.

AI-Helper 아이콘
AI-Helper
안녕하세요, AI-Helper입니다. 좌측 "선택된 텍스트"에서 텍스트를 선택하여 요약, 번역, 용어설명을 실행하세요.
※ AI-Helper는 부적절한 답변을 할 수 있습니다.

선택된 텍스트

맨위로