Input topic partitions define the level of parallelism, and if you have stateful operations like aggregation or join, the state of those operations in sharded. If you have X input topic partitions you get X tasks each with one state shard. Furthermore, state is backed by a changelog topic in Kafka with X partitions and each shard is using exactly one of those partitions.
If you change the number of input topic partitions to X+1, Kafka Streams tries to create X+1 tasks with X store shards, however the exiting changelog topic has only X partitions. Thus, the whole partitioning of your application breaks and Kafka Streams cannot guaranteed correct processing and thus shuts down with an error.
Also note, that Kafka Streams assume, that input data is partitioned by key. If you change the number of input topic partitions, the hash-based partitioning changes what may result in incorrect output, too.
In general, it's recommended to over-partition topics in the beginning to avoid this issue. If you really need to scale out, it is best to create a new topic with the new number of partitions, and start a copy of the application (with new application ID) in parallel. Afterwards, you update your upstream producer applications to write into the new topic, and finally shutdown the old application.