A Lucene index segment can be viewed as a "mini" index or a shard. Each segment is a collection of all needed files for an index, including .tim and .tip. If you list your Lucene index directory, you'll see files belonging to the same segment have the same names with all different types. In fact, if you force a merge, you'll get an index of one single segment.
Each segment contains an index of a subset of your document collection. Lucene usually creates a new segment when new documents are added to a working index, to avoid (or rather delay and batch later) reindexing cost.
When a search is executed, Lucene will fan that query over all segments, and all the index wide statistics required for relevance ranking (such as idf) are combined, so from the client's perspective, the ranking is the same as searching from an index of one segment. Note that the other famous stat, tf, is per-document, so it is already available at the segment reader layer.
Now things get more interesting when you have Lucene indexes across machines (as the case in Solr Cloud, which is one of the distributed search service built on Lucene). Due to performance and complexity, Solr Cloud don't aggregate global stats across clusters (yet), so each machine would use their own stats on the index it holds (which could be consisted of multiple segments :).
摘自:https://www.quora.com/Are-the-individual-tim-and-tip-files-term-dictionaries-of-a-Lucene-index-segment-updated-when-a-new-segment-is-added-to-Lucene