ANOVA- & It use in Air Polluition level-
ANOVA (Analysis of Variance) is a
statistical method used to test the difference between two or more group means.
It helps to determine whether there is a statistically significant difference
between the means of different groups or samples. In air pollution level
studies, ANOVA can be used to compare the means of different pollutant
concentrations in different areas or at different times. For example, ANOVA can
be used to compare the mean concentrations of particulate matter (PM) in
different cities or to compare the mean concentrations of PM at different times
of the day. ANOVA helps to determine whether the differences between the means
of the groups are statistically significant or whether they could have occurred
by chance. The null hypothesis in ANOVA is that there is no significant
difference between the means of the groups, and the alternative hypothesis is
that at least one of the group means is different from the others. The results
of ANOVA can be presented in the form of an F-test, which provides a ratio of
the between-group variance to the within-group variance. If the F-value is
greater than the critical value, then the null hypothesis is rejected, and it
can be concluded that at least one group mean is different from the others. Overall,
ANOVA is a useful statistical tool in air pollution level studies for comparing
the means of different pollutant concentrations in different areas or at
different times, and it can help to identify areas or times with significantly
higher or lower levels of pollution.
Example-
Sure, let's consider an example of air pollution level
comparison at different sites using ANOVA analysis.
Suppose we want to compare the mean concentrations of
particulate matter (PM) at three different sites - Site A, Site B, and Site C.
We have collected data on PM concentrations over a period of one week at each
site and have calculated the mean and standard deviation for each site. The
data is presented in the table below:
Site
Mean PM Concentration (µg/m3)
Standard Deviation (µg/m3)
A
25
5
B
32
6
C
28
4
To test whether there is a significant difference in the
mean PM concentrations at these sites, we can use ANOVA analysis. The null
hypothesis is that there is no significant difference in the mean PM
concentrations at the three sites, and the alternative hypothesis is that at
least one site has a different mean PM concentration than the others.
To perform ANOVA analysis, we first calculate the total sum of squares (SST),
which represents the total variation in the PM concentrations across all three
sites. We then calculate the between-group sum of squares (SSB), which
represents the variation in the PM concentrations between the three sites, and
the within-group sum of squares (SSW), which represents the variation in the PM
concentrations within each site. Using these values, we can calculate the
F-value, which represents the ratio of the between-group variance to the
within-group variance. If the F-value
is greater than the critical value at the desired level of significance (e.g.,
0.05), then we reject the null hypothesis and conclude that there is a
significant difference in the mean PM concentrations at the three sites.In
this example, the calculations for SST, SSB, SSW, and the F-value are as
follows:
SST = 276.67
SSB = 60.67
SSW = 216
F-value = 3.18
Assuming a desired level of significance of 0.05 and 2
degrees of freedom for both the numerator and denominator, the critical
F-value is 3.89. Since the calculated F-value (3.18) is less than the critical
value (3.89), we fail to reject the null hypothesis and conclude that there is
no significant difference in the mean PM concentrations at the three sites.
Therefore, based on this ANOVA analysis, we can conclude that there is no
significant difference in the mean PM concentrations at Site A, Site B, and
Site C.