It is a misconception that comparing floating-point values for equality is impaired. In any implementation that is not horribly broken, comparing floating-point values for equality returns true if and only if the values compared are equal.
Any actual errors lie earlier in your computation. Those errors must be controlled and characterized. Without a characterization of the errors, it is impossible to make any recommendations about what operations to perform that would suit your purposes.
If you have values that have been computed inexactly, so that they may contain some errors, and you wish to accept as equal values that are actually unequal, then you must state (a) a criterion for accepting equality, and (b) a criterion for rejecting equality. When those criteria have been stated, then people might be able to give you recommendations about implementing a test that satisfies both criteria. Note that (b) is important as well as (a), because you generally do not wish to accept as equal values that are actually unequal. Because there are errors in your computations, some of the decisions will be wrong, and you must determine the criteria (a) and (b) so that the incorrect decisions are acceptable for your application. It is important that (a) and (b) not overlap, or there will be cases in which no decision is acceptable.
In your case, you have stated no source of errors other than reading data from a file. If the data in the file is the result of floating-point computations written by good software (that correctly converts floating-point values to decimal numerals with sufficient precision), and you read it with good software (that correctly converts decimal numerals to floating-point values), then there is no error in this round-trip of data, and you should simply test for equality with no embellishments.