Decision support system for insect.pdf

XY-4岩心钻机升降机的设计

收藏

资源目录
跳过导航链接。
XY-4岩心钻机升降机的设计.zip
XY-4岩心钻机升降机的设计
KingTrans1.txt---(点击预览)
Insect populations in grain residues associated with.pdf---(点击预览)
Decision support system for insect.pdf---(点击预览)
Analysis of causes of casing elevator fracture.pdf---(点击预览)
XY-4岩心钻机升降机的设计
胡军雄毕业设计
压缩包内文档预览:
预览图 预览图 预览图 预览图 预览图 预览图 预览图 预览图 预览图
编号:30581330    类型:共享资源    大小:5.90MB    格式:ZIP    上传时间:2019-12-12 上传人:机****料 IP属地:河南
50
积分
关 键 词:
XY 岩心 钻机 升降机 设计
资源描述:
XY-4岩心钻机升降机的设计,XY,岩心,钻机,升降机,设计
内容简介:
Journal of Stored Products Research () Stored Grain Advisor Pro: Decision support system for insectmanagement in commercial grain elevators$P.W. Flinna,?, D.W. Hagstruma,1, C.R. Reedb, T.W. PhillipscaUSDA-ARS Grain Marketing and Production Research Center, Manhattan, KS, USAbDepartment of Grain Science and Industry, Kansas State University, KS, USAcDepartment of Entomology, Oklahoma State University, Stillwater, OK, USAAccepted 20 September 2006AbstractA decision support system, Stored Grain Advisor Pro (SGA Pro) was developed to provide insect pest management information forwheat stored at commercial elevators. The program uses a model to predict future risk based on current insect density, grain temperatureand moisture. A rule-based system was used to provide advice and recommendations to grain managers. The software was tested in aresearch program conducted at commercial grain elevators in Kansas and Oklahoma, USA. A vacuum-probe sampler was used to taketen 3-kg grain samples in the top 12m of each bin that contained wheat. After the insect species and numbers were determined for eachsample, the data were entered into SGA Pro. A risk analysis and treatment recommendation report for all bins was presented to the grainmanagers every 6 weeks. SGA Pro correctly predicted for 7180% of bins whether the grain was safe or at high risk of dense infestationand grain damage. SGA Pro failed to predict unsafe insect densities in only 2 out of 399 Kansas bins (0.5%) and in none of 114 bins inOklahoma. Grain managers who followed SGA Pros recommendations tended to fumigate only the bins with high insect densitiesinstead of fumigating all bins at their facility. This resulted in more efficient insect pest management because fumigating bins only wheninsect densities exceeded economic thresholds and treating only the bins that required fumigation minimized the risk of economic lossesfrom insects, reduced the cost of pest management, and reduced the use of grain fumigant.Published by Elsevier Ltd.Keywords: Rhyzopertha dominica; Cryptolestes ferrugineus; Decision support system; Model; Integrated pest management; Stored grain; Area-wide1. IntroductionMost cereal grain produced in the USA is stored incommercial facilities known locally as grain elevators.Major insect pests of stored wheat in the USA includeRhyzopertha dominica (F.), Sitophilus oryzae (L.), Crypto-lestes ferrugineus (Stephens), Tribolium castaneum (Herbst),and Oryzaephilus surinamensis (L.). The first two speciescause the most grain damage because the immature stagesdevelop inside the grain kernels. These internal feedinginsects are a major cause of insect contamination in wheatflour because the immature stages and pre-emergent adultscannot be completely removed from the wheat before it ismilled. Grain managers and regulators use the number ofinsect-damaged kernels (IDK) in wheat as an indirectmeasure of the density of internally-infested kernels. Ifmore than 32 IDK are found per 100g of wheat, the grainis classified as sample grade and unfit for humanconsumption (Hagstrum and Subramanyam, 2006). Atmost domestic flour mills, the wheat purchasing specifica-tions include a maximum IDK count of either 3 or 5/100g.Cryptolestes ferrugineus is a very common insect pest thatoften reaches high densities near the grain surface. Younglarvae of this species frequently feed on the germ of wholekernels and on fine material in the grain (Rilett, 1949).They leave the germ before becoming adults and do notcause IDK. Nevertheless, grain infested with this species islikely to receive a lower price than uninfested grain.ARTICLE IN PRESS/locate/jspr0022-474X/$-see front matter Published by Elsevier Ltd.doi:10.1016/j.jspr.2006.09.004$This paper reports the results of research only. Mention of aproprietary product or trade name does not constitute a recommendationor endorsement by the US Department of Agriculture.?Corresponding author. Tel.: +17857762707; fax: +17855375584.E-mail address: paul.flinn (P.W. Flinn).1Retired.Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.004Typically,controlofstored-graininsectsingrainelevatorsintheUSAincludesmonitoringofgraintemperature and calendar-based fumigations using phos-phine fumigant (Hagstrum et al., 1999). This approachoften fails to distinguish between bins with high and lowinsect densities and does not optimize the timing of thefumigation treatment. Therefore, grain may be unnecessa-rily fumigated, or the fumigation may not be timed toprevent high insect populations and grain damage fromoccurring. Although careful monitoring of grain tempera-ture often alerts the manager to potential mold and insectproblems (Reed, 2006), large populations of insects orsevere mold problems can develop before a temperatureincrease is noted.Incontrasttotraditionalinsectcontrolpracticescurrently used for most stored grain, the integrated pestmanagement (IPM) approach uses sampling to determine ifinsects have exceeded an economic threshold (Hagstrumand Flinn, 1992). Adapting IPM principles to insectcontrol in a grain elevator is complicated by the structureand operation of the facility. A large elevator may haveover 100 bins, and the bins may contain different types ofgrain, stored for different durations. The grain temperatureand moisture often vary greatly between bins, which affectsthe rate at which insects and molds grow and damage thegrain.To facilitate the development and implementation ofIPM practices in stored grain in the USA, the USDAsAgricultural Research Service recently funded a 5-yeardemonstration project for area-wide IPM for stored wheatin Kansas and Oklahoma (Flinn et al., 2003). This projectwas undertaken by a collaboration of researchers at theAgricultural Research Service (Manhattan, Kansas), Kan-sas State University (Manhattan, Kansas), and OklahomaState University (Stillwater, Oklahoma). We used twoelevator networks, one in each state, for a total of 28 grainelevators. One of the project goals was the development ofa decision support system for insect pest management forgrain stored in commercial elevators.Avalidatedinsectpopulationgrowthmodelwaspreviously developed for R. dominica in concrete elevatorstorage (Flinn et al., 2004). This model was used in adecision support system to make management recommen-dations based on current insect density, grain temperatureand grain moisture. A decision support system (StoredGrain Advisor) was developed previously for farm-storedgrain in the USA (Flinn and Hagstrum, 1990b). However,that software was not suitable for large commercialelevators because the grain sampling methods and recom-mendations were specific for farm-stored grain.Decision support systems for stored grain have beendeveloped in several countries. In Canada, CanStore, wasdeveloped to assist farmers in stored grain management(www.res2.agr.ca/winnipeg/storage/pages/cnstr_e.htm). InAustralia, Pestman ranks insect pest management recom-mendations by their cost and provides a graphical site planthat allow a manager to quickly find information aboutany bin (Longstaff, 1997). In the UK, Integrated GrainStorage Manager (Knight et al., 1999) is a new version ofGrain Pest Advisor (Wilkin and Mumford, 1994) that wasdeveloped with input from farmers and storekeepers tobetter suit their needs. Grain Management Expert System(Zonglin et al., 1999), was developed from Pestman for usein China. QualiGrain is an expert system for maintainingthe quality of stored malting barley (Ndiaye et al., 2003;Knight and Wilkin, 2004).None of the previously mentioned systems fit therequirements of the USA commercial grain storage system.We needed a management program that was based onintensive grain sampling for insect pests in each elevatorbin (at least ten 3-kg grain samples per bin to a depth of12m). In addition, the system needed to be able to predictinsect population growth for up to 3 months, based oncurrent insect density in the bin, grain temperature, andgrain moisture. In this paper, we describe the validation ofa decision support system that was developed as part of anarea-wide IPM demonstration project. The decision sup-port system uses current and predicted insect densityestimates to provide grain managers with an overall riskanalysis for the grain at their facility and recommendedtreatment options.2. Materials and methods2.1. Grain samplingAn area-wide IPM program for grain elevators wasstarted in 1998. Investigators collected data from twoelevator networks in south-central Kansas and centralOklahoma. Each network consisted of at least 10 ruralelevators and at least one terminal elevator. The ruralelevators typically receive grain from farmers and store itfor a shorter period of time compared to the terminalelevators, where most grain is received from rural elevators.Storage bins at these elevators were either upright concretebins, typically 69m in diameter and 3035m tall, or metalbins that are shorter and wider. Maize and other grainswere stored in the project elevators, but only the wheat wassampled during this project.Various sampling methods to estimate insect density inupright concrete grain bins were tested: probe traps placedat the grain surface, samples taken as the grain was movedon transport belts, and samples taken from grain dis-charged from the bins onto a stationary transport belt.Samples taken with a vacuum probe as the grain was at restin the storage bins provided the best estimate of insectdensity. Data collected with the vacuum probe were highlycorrelated with grain samples taken as the bin wasunloaded (r2 0.79, N 16, P 0.001). In addition,unlike the other sampling methods, the power probeallowed the grain to be sampled at any time, and itprovided a vertical profile of the insect distribution for eachbin. We used a Port-A-Probe (Grain Value Systems,Shawnee Mission, Kansas), which consists of a vacuumARTICLE IN PRESSP.W. Flinn et al. / Journal of Stored Products Research () 2Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.004pump powered by a 5.3KW gasoline engine connected byflexible plastic tubing to sections of rigid aluminum tubes1.2m long by 3.5cm wide. The probe was insertedvertically into the grain and a 3.9l (about 3kg) sample ofwheat was taken during every 1.2m transect of grain to adepth of 12m. In the concrete upright bins, the grain wassampled through the entry port. In metal bins, the probewas inserted at 35 locations across the surface. Grainsamples were extracted from the grain mass by suction andcollected in a cyclone funnel.Samples were processed twice over an inclined sieve(89?43cm, 1.6mm aperture) (Hagstrum, 1989) to sepa-rate insects from the wheat. Material that passed throughthe screen was collected on a pan below the screen, whichthen slid into a funnel at the bottom of the pan. A re-sealable plastic bag was attached to the funnel to collect thematerial that was separated from the grain sample. Ahopper above the screen held the grain sample and a funnelat the base of the screen directed material passing over thescreen into a plastic bucket. The sieve was inclined 241from horizontal and the opening of the hopper wasadjusted such that the sample passed over the screen inabout 25s. Each sample was passed over the sieve twotimes. Validation data for SGA Pro were selected from binsthat were sampled at least twice, starting in autumn, inwhich the wheat was not moved or fumigated. In a typicalbin (69m wide and 3035m tall), the sampling rate forvacuumprobesampleswas0.070.13kg/tofgrainsampled. In most cases, only the grain in the top 12m ofthe bin was sampled.2.2. Decision support softwareThe Stored Grain Advisor Pro (SGA Pro) softwarewas initially developed using Microsoft Access. Theprogramwasthenmodifiedandre-writtenusingVisual Basic 6.0. We designed a graphical user interfacethat provides a bin diagram for each elevator location(Fig.1).Datawereenteredusingthreedata-entryforms: insects, grain quality, and grain temperature. Dataentered in the insect form were: sample type (bottom,movingsample,probetrap,orvacuumsample)and the number of insects found in each sample for fiveprimary stored-grain insects (Cryptolestes spp., R. domin-ica, O. surinamensis, Sitophilus spp., and Tribolium spp.)(Fig. 2). Data entered for grain quality were: grade, %dockage,testweight,moisture,foreignmaterial,%shrunken or broken kernels, insect damaged kernels, %protein(Fig.3).Graintemperaturedatawerealsoentered into the database for each bin (data entry is similarto the grain quality form and is not shown here). Mostelevator bins were equipped with one or more cablescontaining up to 20 thermocouple-type sensors per cable.In bins not equipped with temperature sensors, investiga-tors inserted temporary probes to collect information ongrain temperature.The SGA Pro system will recommend either fumigation,aeration, or waiting untilthe next sampling periodbased on current insect density in the bin, grain tempera-ture, aeration capability, time of year, and predictedinsect density in 1, 2, and 3 months. For example,ARTICLE IN PRESSFig. 1. Elevator bin diagram from Stored Grain Advisor Pro; on the computer screen, bins of grain at high, moderate, and low risk for insect problems areshown in red, blue and green, respectively. In this figure, bin numbers that are light grey are at low risk, bins 615, 620 and 621 are at high risk, and the restare at moderate risk. Bin 620 is currently selected (using the mouse), and the information for this bin is shown in the bottom half of the screen.P.W. Flinn et al. / Journal of Stored Products Research () 3Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.004for bin 620 (Fig. 4), the program indicated that thecurrent insect density was 2.5kg-1and predicted a densityof 14.6insects/kg in 1 month. Twenty-eight percent of theinsects from the samples were species that caused IDK, soSGA Pro recommended fumigation followed by aeration tocool the grain.ARTICLE IN PRESSFig. 2. Insect data entry form for Stored Grain Advisor Pro. The number of insects for each 3-kg sample were entered into the form. For simplicity,common names are used for the insect species (flat Cryptolestes spp., lesser R. dominica, sawtooth O. surinamensis, weevil Sitophilus spp., flourbeetle Tribolium spp.).Fig. 3. Grain quality data entry form for Stored Grain Advisor Pro (grade grain grade, DKG(%) % dockage, TW test weight, moist(%) %grain moisture, DK(%) % damaged kernels, FM(%) % foreign material, SHBK(%) % shrunken or broken kernels, IDK number of insectdamaged kernels per 100g, protein(%) % protein).P.W. Flinn et al. / Journal of Stored Products Research () 4Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.004An equation was developed to predict insect populationgrowth based on current insect density, grain temperatureand moisture by running simulations for a model of R.dominica (Flinn and Hagstrum, 1990a), over temperaturesfrom 21.5 to 33.51C and moistures from 9.5 to 13.5%.Tablecurve 3D version 3 (SPSS, 1997) was used to fit anequation to the model-generated data, where Z is the rateof increase over 30 days, X is temperature, and Y ismoisture:Z 9:2004 ? 1:6898X 0:07872? 0:0011X2 0:1841Y=1 ? 0:0197X ? 0:0161Y.1:0This equation fitted the data well (R2 0.98, N 25).Because we needed to predict only 13 months ahead, thisequation was adequate for quickly estimating futurepopulations for many bins present in the database (oftenmore than 100). Although C. ferrugineus was often themost numerous species during the first month of storage,we based Eq. (1.0) on R. dominica because it is the moredamaging species, it was more common than C. ferrugineuslater in the season, and the predicted rates of increase forboth species were fairly similar (Hagstrum and Flinn,1990). We did not use a model for S. oryzae because thisspecies was found in about 1% of the wheat samples,whereas, R. dominica was found in approximately 60% ofthe samples.SGA Pro used a rule-based algorithm to determinewhether bins were safe, moderate, or at high risk of havinginsect densities that exceed certain thresholds, based on thecurrent and predicted insect density, grain temperature,and grain moisture. Insect economic thresholds can beadjusted by the user (Fig. 5). In addition, alerts can also beset for: high grain moisture, high thermocouple readings,and high numbers of internally feeding insects in anindividual sample.SGA Pro was tested during the final 2 years of the area-wide IPM study. Bins at each elevator were sampled atapproximately 6-week intervals, data were entered intoSGA Pro, and the report recommendations were shown totheelevatormanagers.SGAProwasvalidatedbycomparing predicted insect densities and control recom-mendations with actual insect densities in the same bins 6weeks later. Validation data came from bins in which thegrain had not been turned or fumigated for at least twosampling periods.3. ResultsIn the Kansas data set from 2002, SGA Pro correctlypredicted that bins were safe or at high risk in 285out of 399 cases (Table 1). Forty-seven of the 399 binsrequired fumigation. SGA Pro failed to predict unsafeinsect densities in only two bins (0.5%), and the insects inthese isolated instances were mostly near the surface,suggestingrecentimmigration.Thesimplegrowthmodel used by SGA Pro tended to overestimate insectdensities in bins that were at medium risk (112 out of 399bins). All of the bins that the software predicted to be athigh risk contained insect densities greater than thethreshold at the next sampling period. In Oklahoma,SGA Pro correctly predicted bins that were safe or athigh risk in 107 out of 133 total bins. Forty-five of the133 bins needed to be fumigated. All of the bins that theprogram determined as being safe turned out to haveinsect densities below the threshold of 2insects/kg 6 weekslater. As in Kansas, SGA Pro tended to overestimateinsect densities in bins that were at medium risk (26 out of131 bins).ARTICLE IN PRESSFig. 4. Stored Grain Advisor recommendation report. The report shows alerts for five elevator bins (Current average insects per kg grain, 1Mon predicted insect density in 1 month, 2 Mon predicted insect density in 2 months, IDK insect % of the insects in the sample that cause IDK,Max SS internal highest number of internal insects in any single sample, and management option recommended actions for the elevator manager).P.W. Flinn et al. / Journal of Stored Products Research () 5Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.0044. DiscussionCompared to other decision support systems for largecommercial grain stores, SGA Pro is the first that usesintensive sampling of the grain to determine if insectdensities exceed economic thresholds. In countries wherethis type of software has been developed, for example UK,Australia, and Canada, the grain trade operates on a zerotolerance for insects in stored grain. This makes it difficultto implement economic thresholds for insect pests. SGAPro is also the first decision support system for commercialgrain storage that has been field validated, certainly to theextent presented here. Integrated Grain Storage Manager(Knight et al., 1999) was revised with input from storekeepers(atypeofvalidation),andGrainStorageInformation System (Mann et al., 1997) was verified byseveral experts.We demonstrated that the use of SGA Pro resulted in alow type A error (SGA Pro predictso2insects/kg, andactual density in 6 weeks is42insects/kg of wheat),but a rather moderate type B error (SGA Pro predicts410insects/kg, and actual density in 6 weeks is o10in-sects/kg). A low type A error and moderate type B errortranslates in practice to a low probability of graindeterioration.Althoughunnecessaryexpenditureongrain fumigation occurs from time to time, the cost ofsuch errors is minimal. Experience with companies thatadopt a data-based decision model has shown that theARTICLE IN PRESSFig. 5. Economic thresholds used by Stored Grain Advisor Pro are adjustable by the user. In addition to settings thresholds for average and single sampleinsect counts, alerts can also be set for temperature hotspots or high-moisture grain samples.Table 1Number of correct predictions by Stored Grain Advisor Pro, and type Aand B errors for elevator bins in Kansas and OklahomaLocationTotalCorrectType AaType BbNN%N%N%Kansas39928571.420.511228.1Oklahoma13310780.500.02619.5aType A errors: software predicts safe (o 2insects/kg) and actualdensity in 6 weeks was 42 insects/kg of wheat.bType B errors: software predicts medium risk (410insects/kg) andactual density in 6 weeks was less than 10insects/kg of wheat.P.W. Flinn et al. / Journal of Stored Products Research () 6Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.004unnecessary grain turning may have a hidden benefit.Grain managers, because they are conditioned to turn andfumigate wheat at a certain time of year, seem to feel moresecure using the new approach if it recommends someinsurance grain turning. They are therefore more likelyto adopt the new approach compared to a program thatrecommends little or no turning and fumigation for longperiods of time.SGAProprovidesacomparisonofthecostoffumigating grain in all bins vs. sampling in all bins andfumigating only grain with high insect densities (Fig. 6).For example, fumigating all 33 bins at an elevator storing17,600tonnes (646,698 bushels) of wheat could cost $5220USD (electrical costs for turning per bushel $0.0033USD, phosphine fumigant $0.002 per bushel, loss inwheat volume $0.0028 per bushel). However, if theelevator manager knows that only eight of these bins havehigh insect densities, fumigating only these eight bins plusthe cost of sampling ($0.00205 USD per bushel) all 33 binsis $3,053 USD for a savings of $2,167 USD.SGA Pro software is freely available to the public at theGrain Marketing and Production Research Center web site(/npa/gmprc/bru/sga). Learning to usethe software is fairly easy; however, using the samplingequipment and identifying the insects does require sometraining.A private company is using SGA Pro with the samplingmethods developed in this project, and has providedscouting services to more than 70 elevators in Kansas,Oklahoma,andNebraska.Industryresponsetotheavailability of grain scouting services for IPM in storedgrain appears to parallel that of farmers initial responsesto crop consultants that first offered IPM services forproduction agriculture. Most grain managers resist thechange to data-based decision making. A few earlyadopters of grain scouting, those who appeared to be opento the increased use of computer technology in grainmanagement, have embraced the entire information-baseddecision-makingconcept.Severalmanagersperceivedvalue in parts or components of the services offered bythe grain scouting company. For example, several of thecompanys clientele initially purchased only the servicesthat had obvious benefits to the grain merchandiser, suchas the wheat protein data generated by vacuum probesampling. Over time, these users began to perceive thepotential benefits of the insect scouting service.To quantify the effect of the information-based ap-proach to insect pest management, the incidence anddensityofinsect-damagedwheatkernelsinsamplescollected in the autumn of 2003, the first year of thescouting companys operation, were compared with sam-ples collected during the same time period 1 year later.ARTICLE IN PRESSFig. 6. Economic analysis calculated by Stored Grain Advisor Pro. Users can change costs for electricity, fumigant, wheat price, shrink factor (height ofgrain lost by turning and fumigating grain), and sampling.P.W. Flinn et al. / Journal of Stored Products Research () 7Please cite this article as: Flinn, P., et al., Stored Grain Advisor Pro: Decision support system for insect management in commercial grain elevators.Journal of Stored Products Research (2007), doi:10.1016/j.jspr.2006.09.004Data from four elevators were used in this analysis,providing 2132 data points. The frequency of samples witha high density (410/100g) of kernel damage was reducedby 24% (chi square 34.8, Pp0.01), and the mean densityof kernel damage (2.5/100g vs. 1.9/100g) was significantlydifferent (Pp0.05).A case study that illustrates the value of the IPMapproach used by SGA Pro was created accidentally whena scouting report was not relayed to a grain manager.Twenty-four bins of wheat were scouted at an elevator thatwas manned only part of the year. The manager was awayduring the scouting and was unaware of the scoutingreport. When the manager returned, he began treating thegrain based on his traditional approach. When the scoutingcompanys crew returned 6 weeks later to conduct routinere-sampling, seven bins had been turned and fumigated.Based on vacuum probe sampling, the tradition-baseddecisions were correct in three of the seven bins; that is,thegrainthatwasfumigateddid,infact,requirefumigation. In two cases, grain containing too few insectsto warrant fumigation was treated. For two of thefumigated bins, the data were inconclusive regarding thevalidity of the traditional approach. Of the 17 bins that hadnot been fumigated, the previous scouting report hadrecommended no action until further sampling in 10bins. In three of these bins, insect densities had increased inthe intervening period such that fumigation was warrantedand would be more effective than if it had been doneprematurely, but no significant grain damage occurred. Inall grain for which SGA Pro recommended no action, nograin damage had occurred in 6 weeks. In the remainder (7)of the 17 untreated bins, the previous report by SGA Prohad recommended immediate fumigation. In six of seven,the second sampling showed insect populations exceedingacceptable levels, and grain damage had occurred becausefumigation had not been done when recommended. In onebin, insect numbers had not increased significantly and nosignificant grain damage had occurred. The results of thiscase study closely parallel those of the analysis describedabove from data taken during the research project. That is,SGA Pro recommended immediate action in all caseswhere it was needed but slightly over-estimated the numberof grain lots requiring fumigation in 6 weeks.Investigators recognized that area-wide IPM will beadopted by grain elevator managers only if it is moreeffective and profitable than the traditional approach, andif it fits into their current marketing and grain managementpractices. We tried to determine how elevator managersmight use insect-monitoring information to manage insectproblems in their grain bins. The findings of the area-wideIPMprojecthavebeencommunicatedtomanagersthrough nine newsletters, at training programs in Kansas,Oklahoma, Nebraska, and Minnesota, and at two recentInternationalGrainElevatorandProcessingSociety(GEAPS) annual meetings. Information gathered in thisstudy was used to develop extension publications forstored-grain integrated pest management.The sampling routines and decision support softwarethat we developed have several advantages over calendar-based fumigation. Treating bins only when insect densitiesexceed economic thresholds and treating only the bins thatneed to be treated minimizes the risk of economic lossesfrom unexpected insect problems, reduces the cost of pestmanagement, and reduces the use of fumigant. Minimizingthe use of fumigant improves worker safety by reducingexposure to phosphine, and reduces the probability thatinsect populations will develop resistance to phosphine.AcknowledgmentsWe thank Paul Fields (Agriculture and Agri-FoodCanada, Winnipeg, Canada), and Mark Casada (USDA-ARS, Grain Marketing and Production Research Center)for reviewing an early version of the manuscript. Specialthanks to Ken Friesen and Kui Zhang for programmingSGA Pro, and to Skip Allen, Sherry Craycraft and GaryGilbert for providing suggestions for software improve-ment and for managing the grain sampling teams. We alsothank the elevator managers who provided access andassistance. This research was funded by an Area-Wide IPMprogram grant from the United States Department ofAgriculture.ReferencesFlinn, P.W.,Hagstrum,D.W.,1990a.Simulationscomparing theeffectiveness of various stored-grain management practices used tocontrol Rhyzopertha dominica (F.), (Coleoptera: Bostrichidae). Envir-onmental Entomology 19, 725729.Flinn, P.W., Hagstrum, D.W., 1990b. Stored Grain Advisor: a knowledge-based system for management of insect pests of stored grain. AIApplications in Natural Resource Management 4, 4452.Flinn, P.W., Hagstrum, D.W., Reed, C., Phillips, T.W., 2003. UnitedStatesDepartmentofAgriculture-AgriculturalResearchServicestored-grain area-wide integrated pest management program. PestManagement Science 59, 614618.Flinn, P.W., Hagstrum, D.W., Reed, C., Phillips, T.W., 2004. Simulationmodel of Rhyzopertha dominica population dynamics in concrete grainbins. Journal of Stored Products Research 40, 3945.Hagstrum, D.W., 1989. Infestation by Cryptolestes ferrugineus (Coleop-tera: Cucujidae) of newly harvested wheat stored on three Kansasfarms. Journal of Economic Entomology 82, 655659.Hagstrum, D.W., Flinn, P.W., 1990. Simulations comparing insectspecies differences in response to wheat storage conditions andmanagementpractices.JournalofEconomicEntomology83,24692475.Hagstrum, D.W., Flinn, P.W., 1992. Integrated pest management ofstored-grain insects. In: Sauer, D.B. (Ed.), Storage of Cereal Grainsand Their Products. American Association of Cereal Chemists, S
温馨提示:
1: 本站所有资源如无特殊说明,都需要本地电脑安装OFFICE2007和PDF阅读器。图纸软件为CAD,CAXA,PROE,UG,SolidWorks等.压缩文件请下载最新的WinRAR软件解压。
2: 本站的文档不包含任何第三方提供的附件图纸等,如果需要附件,请联系上传者。文件的所有权益归上传用户所有。
3.本站RAR压缩包中若带图纸,网页内容里面会有图纸预览,若没有图纸预览就没有图纸。
4. 未经权益所有人同意不得将文件中的内容挪作商业或盈利用途。
5. 人人文库网仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对用户上传分享的文档内容本身不做任何修改或编辑,并不能对任何下载内容负责。
6. 下载文件中如有侵权或不适当内容,请与我们联系,我们立即纠正。
7. 本站不保证下载资源的准确性、安全性和完整性, 同时也不承担用户因使用这些下载资源对自己和他人造成任何形式的伤害或损失。
提示  人人文库网所有资源均是用户自行上传分享,仅供网友学习交流,未经上传用户书面授权,请勿作他用。
关于本文
本文标题:XY-4岩心钻机升降机的设计
链接地址:https://www.renrendoc.com/p-30581330.html

官方联系方式

2:不支持迅雷下载,请使用浏览器下载   
3:不支持QQ浏览器下载,请用其他浏览器   
4:下载后的文档和图纸-无水印   
5:文档经过压缩,下载后原文更清晰   
关于我们 - 网站声明 - 网站地图 - 资源地图 - 友情链接 - 网站客服 - 联系我们

网站客服QQ:2881952447     

copyright@ 2020-2025  renrendoc.com 人人文库版权所有   联系电话:400-852-1180

备案号:蜀ICP备2022000484号-2       经营许可证: 川B2-20220663       公网安备川公网安备: 51019002004831号

本站为文档C2C交易模式,即用户上传的文档直接被用户下载,本站只是中间服务平台,本站所有文档下载所得的收益归上传人(含作者)所有。人人文库网仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。若文档所含内容侵犯了您的版权或隐私,请立即通知人人文库网,我们立即给予删除!