|
|
Cooperative Extension Service |
|
|
|
|
|
|
|
Agricultural
Experiment Station |
|
|
|
|
|
Aquaculture Division Home
|
Animal Manure and Mortality Management
|
|||||||||||||||||||||
INTERPETATION OF ODOR RANK VALUES |
||
Odor Description |
Scentometer
|
Nasal |
Non Detectable |
1 |
1 |
Detectable But Non-Offensive |
2 |
2 |
3 |
||
Mildly Offensive |
4 |
3 |
5 |
||
Strongly Offensive |
6 |
4 |
7 |
||
The first finding of interest is that the majority of the odor measurements had ranks of 1. For 56% of the Nasal samples and 60% of the Scentometer samples, no odors were detected. The Nasal Rank (N R) and Scentometer Rank (S R) charts reveal that as odors became detectable and more intense, the percentage of the odors at each odor level decreases. Thirty-one percent of the Scentometer samples and 17% of the Nasal samples were classified as non-offensive odor ranks. Only 6% of the Scentometer samples and less than 1% of Nasal samples indicated the presence of strongly offensive odors. It is important to remember that at this point these are summary values for the entire survey, so important factors such as distance and odor source are not considered.
The skewed distribution of odor ranks observed for all of the Nasal and Scentometer ranks is very typical of the distribution of values when the data is subdivided into various classes. This skew of the odor ranks to the "Non-Detectable" level with few measurements at a "Strongly Offensive" level indicates that a significant portion of the swine industry's odor problems is due to relatively infrequent occurrence of offensive odors rather than consistent state of offensive odors.
Comparisons of Nasal and Scentometer Measurements
Of interest is the correlation between the Nasal and Scentometer measurements. While they have different ranges and means, both have median and mode values of 1. The Scentometer ranks appear to be slightly more likely to have Non-Detectable scores than Nasal ranks. However, when a detectable odor is present, the Scentometer ranks have a tendency to indicate stronger odors than the Nasal ranks.
Determination of the correlation between Scentometer and Nasal rank scores is important because the "subjective" aspect of Nasal ranks raises questions about the "reliability" of nasal-based measurements. The Scentometer by nature of its design and history raises fewer questions concerning "reliability." In addition, closely related scores would help to increase confidence in the accuracy of all the odor measurements collected during this project.
To enable additional comparisons between the Nasal ranks (N R) and Scentometer ranks (S R), the Scentometer samples were scaled to a 1 to 4 range based on the theoretical relationship, S R=2 H N R !1. The standard data comparison calculations discussed in the data analysis section above for N R, S R, and scaled Scentometer ranks (S R 4) show the means of the NR and S R 4 values to be statistically the same. However, the variances are statistically different. Inspection of the percent frequency information indicates there is still a tendency for the S R 4 values to rank detectable odors higher than the N R values.
Regression analysis was used to further investigate the relationship between the Nasal and Scentometer measurements. To get the required data pairs for the regression, it was necessary to average the Nasal ranks for each site where a Scentometer rank was available. The data was then plotted and a regression analysis performed.
As the plot indicates, there is quite a bit of variability in the data. The R Squared value indicates that only about 48% of the variability in the S R values is associated with the variability of the N R values. However, the regression results indicate that the relationship between the S R and N R values is statistically significant. In addition, both of the regression coefficients are also significant. It should also be noted that the 99% upper and lower boundaries for the regression coefficients include the theoretical coefficient values of 2 and 1.
From this information it is apparent that there is a significant statistical relationship between the S R and N R values. Also, the statistical relationship is very similar to the theoretical one of S R=2 H N R ! 1.
While a higher R Squared value would be desirable, a value this low is not surprising. Measuring and quantifying odors is a complex process that involves not only the odor level at a given location but also the individual's physical ability to detect the odor and the individual's subjective perception of the strength and offensiveness of the odor. Variability in the odor measurements is to be expected in a data set collected by 42 individuals under different environmental conditions.
Due to the strong relationship between S R and N R values, all further odor trends were investigated using a general Odor Rank (OR) value. The OR values ranged from 1 to 4. An OR value is equivalent to an N R value. S R values are scaled to OR values by the equation OR=(S R+1)/2.
Of interest is the fact that while the SR values have some influence in the distribution of the OR values, the distribution of the N R and OR values is statistically the same. This is not surprising since there were over three times as many N R values as S R values, and statistically, the scaled S R and N R values had the same mean.
In the previous section, some of the variation in the odor measurements was attributed to the individuals making the measurements. To compare the odor ranks recorded by the individuals, the OR values were grouped by the individuals making the measurements.
Because all observers were not on the same farms on the same dates, differences in the means and variances of the values are not going to be due solely to differences in individuals, but will also be influenced by farm-based factors and weather conditions.
The calculated results show that many of the individual-based measurement sets have statistically different means and variances. Of the 42 sets, the lowest has mean, median, and mode values of 1.17, 1, and 1, while the values for the highest are 2.23, 2, and 1. The individual associated with the lowest mean odor rank was an individual from the general public. The highest mean odor rank was associated with an individual that worked for one of the government agencies.
In conclusion, there is strong evidence that there are differences in how individuals evaluated odor intensities.
To determine if a correlation existed between how individuals evaluated odor levels and their affiliation to the swine industry, the odor measurements were grouped by affiliation (Agency, Industry, and Public). The comparative tests failed to find statistical differences between the odor values when classed by Agency, Industry, and the Public. All the median and mode values for the odor measurements were 1. The means for odor measurements ranged between 1.5 and 1.6.
From this study, how severely an odor is ranked is influenced by who is making the evaluation. However, this influence appears to be based on individual differences, not industry affiliations. There is no statistically significant trend that any affiliation group ranked the odors lower or higher than the other groups.
The comparative calculations reveal that there are statistical differences in how odors downwind of facilities, manure applications, and mortality disposal units are ranked. The odor measurements associated with manure application and mortality disposal were statistically the same with median and mode values of 2. The mean values were 2.39 for land application and 2.27 for animal mortality. The median, mode, and mean associated with facilities are 1, 1, and 1.51, respectfully. As the odors classified "other" came from off-farm or from non-swine related sources, they will not be discussed.
Only on 2 of 253 measurement sites were odors attributed to swine mortality. Since every farm had disposal units, one can conclude that most of the time the odors coming from disposal units were either undetectable or undistinguishable from the odors coming from the facilities. Therefore, any conclusions concerning odors from disposal units should be based on the absence of odor measurements as well as on the values recorded. From this study, it is apparent that it is possible for the odors from the disposal units to be comparable with land application odors. However, most of the odors coming from disposal units are either Non-Detectable or undistinguishable from the general facility odors.
There were significant differences in the means and variances when the odor measurements were grouped by farm. The median and mode values ranged from 1 to 2. While the mean odor values ranged from 1 to 2.04. Almost all the farms had odor measurements that were ranked as 3 and above. For the farm with the lowest mean odor value, all of the odor values were ranked as a 1. For the farm with the highest mean odor value, 28% of the measurements were ranked as a 1, 33% as a 2, 36% as a 3, and 3% as a 4.
From this it is apparent that while offensive odors were occasionally found on these farms, most of the measurements found non-offensive odors. This finding strengthens an earlier conclusion that a significant portion of the industry's odor problems is associated with infrequent offensive odors rather than constant odors.
Type of Swine Production Effects
Some statistical differences were found between the odors generated by the various types of swine production. Placing the facility types in ascending order of means results in: Farrowing Through Weaning (1.18), Farrowing Through Nursery (1.44), Finishing (1.58), Nursery (1.63), and Nucleus Purebred (1.77). The general trend appears to be that more and larger animals resulted in higher odor levels. However, other factors also appear to be influencing the odor levels, as one would expect the odors from Nursery and Nucleus Purebred operations to be lower than for Finishing operations. This is likely to be the case since the survey included only 2 Nursery and Nucleus Purebred operations and 19 Finishing operations. This small number of representative systems makes it easier for other factors such as weather or topography to obscure any existing odor trends between wet and dry systems.
Wet Vs. Dry Manure Management Effects
Grouping the measurements according to whether a facility had a liquid or a dry manure management system showed that there were no significant differences between the two. However, the means of 1.51 and 1.39 indicate that the dry systems had lower (albeit insignificantly lower) odor levels. This trend is further supported by the fact that the maximum odor value on the dry farm was ranked as a 3. It should also be noted the medians and modes associated with both types of systems were 1. The lack of significant differences may be due to only three farms having dry systems. This small number of representative systems makes it easier for other factors such as weather or topography to obscure any existing odor trends between wet and dry systems.
Significant differences in means and variances occurred when the odor measurements were grouped by the type of manure storage units. However, there were no easily identifiable trends. This lack of clear trends was probably due to two related factors. First, the odor measurements were for the odors coming from both the houses and storage units, not for just the storage units. Also, there were only 1 Lagoon, 1 Settling Basin and Lagoon, 2 Fresh-Water Holding Ponds, and 3 Dry Bedding Systems compared to 7 In-House Pits, 9 Holding Ponds, and 13 Settling Basin and Holding Ponds in the project. The relatively small number of some types of systems makes it easier for other factors such as odors from the houses, weather, or topography to obscure the effects of the storage unit on the odor levels found on the farm.
To investigate any potential trends between farm appearance and odor ranks, the initial farm interview for each farm was used to classify the overall appearance of the farm as Poor, Fair, Good, or Very Good. Since these assignments were made secondhand and based on the interview form, some precision was lost. However, statistical differences occurred when the odor measurements were grouped by these classes. The facilities classified as Poor had a mean odor value of 1.85 while the mean odor ranks for the other classes were 1.53 or less. The Poor class also had a median value of 2 while the others had values of 1. However, the maximum odor rank of the Poor class was 3 while the maximum rank on two of the other classes was 4. This apparent discrepancy is explained by the fact that for the Poor class the frequency of values was fairly uniform for the odor ranks of 1, 2, and 3. While for the other appearance classes, over half of the odor values had ranks of 1.
The relationship of poor farm appearance and higher odor rank raises the question of causality. Did farm appearance influence perceptions, or are higher odor ranks the result of a lower level of overall farm management? Probably both management and perceptions played a role. This study was not designed to address this question. Whatever the cause, a link exists between farm appearance and the odor levels. Farms with better appearance rankings were associated with lower odor measurements.
To investigate any potential trends between a history of complaints against the farms and odor ranks, the initial farm interview form for each farm was used to classify the overall complaint history of the farm as None, Very Few, Few, and Several. Since these assignments were made secondhand and based on the interview form, some precision was lost.
When the odor measurements were grouped by these classes, there were some statistical differences in the means. The statistical differences occurred between the Few (1.60), None (1.41), and Very Few (1.35) classes. The percent frequency information supports the trend that a history of complaints was related to higher odor ranks. The strength of this relationship is tempered somewhat by the fact that all the median and mode values are 1, except for the Few class which has a median value of 1.25. Some of the "uncertainty" in the trend may be explained by the fact that in several instances the farmer indicated that some complaints had as much to do with personality conflicts as with odor.
Even given the questions of whether the complaints were justified and the possible lack of precision in assigning the farms to the classes, a history of complaints was associated with higher odor levels.
Odor Control Additives Effects
Seven farms were either using, or had used, some kind of additive to help control odors. Nine farms had indicated they had never used any odor control additives. The history of the use of odor control additives is unknown on the remaining farms.
To investigate any effects additives might have on odor levels, two sets of comparisons were attempted. One comparison looked at the odor levels where the source of the odors was the facilities. The other looked at the odor levels where the source of the odors was the land application of manure.
The effect of additives on odors associated with land application of manure was not possible because the survey did not sample any application events on the additives farms. The comparison with the facilities as the odor source was possible, but no significant differences in either the means or variances were found. The median and mode values in both cases were all equal to 1, further indicating no discernable differences in odor levels with the use of additives.
There are several possible reasons for the lack of significant reductions in odor levels with the use of additives. In this project the "use of additives" classification was very broad. Any farm that had ever used additives (not just those using additives now) was classified as using additives. Also, several different brands of additives had been used, raising the question of which, if any, of the additives were effective. Finally, since the odors were from both the houses and the ponds, house odors could have masked any trends.
Due to the intrinsic nature of statistics and the structure of this survey, to conclude that additives are ineffective at controlling odors is incorrect. Rather, the results conclude that the data fails to prove that they had a significant effect on odor levels at an ? level of .05. At an ? level of .1 the difference in odor levels is significant. (Refer back to the data analysis section for questions regarding ?.)
To this point in the investigation of the potential odor relationships, the data has been grouped into classes and comparative calculations have been used to draw conclusions. For the remaining trend investigations, graphs and regression analyses will also be used. The factors that will be investigated are distance, temperature, relative humidity, and wind speed. For each case, the effects of the factor on facility odors, application odors and the combined facility, application, and mortality odors will be presented. The mortality odors are included in the combined odor data because they were measurements recorded during the study. However, since only 11 measurements at two sites were attributed to mortality, separate graphical and regression analysis will not be reported for mortality-based odor measurements.
The analysis revealed that there is a relationship between distance and odor. The general trend is for odor levels to decrease as distance from the source increases. In addition, facility odors are lower and decrease more rapidly with distance compared to manure application odors. For the measurements made within 528 feet (1/10 mile) of the source, the mean, median, and mode values were 1.76, 2, and 1 for the facilities and 2.58, 2.5, and 2 for the manure applications. The maximum distance that an offensive facility odor was recorded was 1,584 feet (3/10 mile) compared to 2,640 feet (1/2 mile) for a manure application.
All of the regression relationships were statistically significant. All of the regression coefficients were also statistically significant with the exception of the distance coefficient for the application-only odors. This may be due to the 6 odor measurements with a rank of 2 made at a distance of 1 mile. These measurements were made at one site and reflect the odors encountered from the land application of manure from an in-house pit. The measurements were made at 12:30 p.m. and the weather conditions included an 80ºF temperature, 35% relative humidity, and a 3 m p h wind, a set of conditions that should be fairly conducive to the release and movement of odors. While these 6 odor measurements do not completely follow the trend of the other values, it is important to note that with a value of 2 they were ranked as Detectable But Non-Offensive.
These 6 values point out that while there is a valid statistical relationship between distance and odors, the variability in the data indicates that there are also other factors which play a role in the transmission of odors. The regression analyses indicate that distance accounts for less than 20% of the variability in the odor measurements.
There appears to be no consistent odor trend associated with temperature. For anaerobic digestion in liquid manures it is commonly held that increases in temperature are associated with increases in odor. This relationship is attributed to increased biological activity, which in the process of breaking down the organic material in the odor source increases the amounts of odorous compounds.
The distribution and mean values information from this study fail to show this trend. Instead, the temperature coefficients for the combined odors and facility-only odors are not statistically significant in explaining the variability in the odor measurements. In addition, while the temperature coefficient for the application odor data is significant, the regression analysis indicates that the application odors decreased with increasing temperatures for this study.
Apparently other factors are overriding any effects temperature may have. This lack of influence may be due in part to the fact that the maximum temperature recorded during the project was only 88ºF. Higher temperatures may result in higher odor levels. In addition, the facilities-based odors came not only from the manure storage units but also from the houses.
There is a slight inverse relationship between relative humidity and odor. Increases in relative humidity are associated with slight decreases in odor levels. The R Squared values indicate that in this study the relative humidity is associated with less than 2% of the variability in the odor measurements.
For odors originating from facilities, wind speed appears to have a positive relationship. As wind speed increased, the odor level increased slightly. A similar trend was also found, but was not statistically significant, for the odors associated with the land application of manure. In all cases, wind speed had only a slight affect on odor levels. At best, wind speed accounts for less than 2% of the variation in odor values.
The development and implementation of this project required the cooperative efforts of many individuals and organizations. A special word of appreciation goes to the Arkansas Pork Producers Association who requested and funded the project, the producers whose farms were surveyed, and the team members who collected the information. This project would not have been possible without their willingness to participate.
Project Manager: Dr. Karl VanDevender, Extension Agricultural Engineer, Cooperative Extension Service, University of Arkansas.
Arkansas Pork Producers Association
National Pork Producers Council
Cooperative Extension Service, University of Arkansas
USDA, Natural Resources Conservation Service
Arkansas Department of Pollution Control and Ecology
Arkansas Soil and Water Conservation Commission
University of Arkansas Animal Science Department
Tyson Foods Inc., Swine Division
Cargill Pork
Arkansas Swine Producers
Individuals from the General Public
Kennedy, John B., and Adam M. Neville. Basic Statistical Methods for Engineers & Scientists. 2nd edition. Harper & Row Publishers. 1976.
Mendenhall, William, Richard L. Scheaffer, and Dennis D. Wackerly. Mathematical Statistics with Applications. 2nd edition. Duxbury Press. Boston, Massachusetts. 1985.
Neter, John, William Wasserman, and Michael H. Kutner. Applied Linear Statistical Models. 2nd edition. Richard D. Irwin, Inc., Homewood, Illinois. 1985.
Scentometer: An Instrument for Field Odor Measurement. Barnebey & Sutcliffe Corporation, P. O. Box 2526, Columbus, Ohio 43216.1
Steel, Robert G.D., and James H. Torrie. Principles and Procedures of Statistics, A Biometrical Approach. 2nd edition. McGraw-Hill Book Company. 1980.
1 The mention of products and trade names in this publication does not signify that these products are endorsed or approved to the exclusion of comparable products.
Back to Animal Manure and Mortality Management
|
© 2006 |
|
|
University of Arkansas • Division of Agriculture |
Mission
•
Disclaimer
•
EEO
•
|